US9177349B2 - Method and system for rating patents and other intangible assets - Google Patents
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- US9177349B2 US9177349B2 US13/092,764 US201113092764A US9177349B2 US 9177349 B2 US9177349 B2 US 9177349B2 US 201113092764 A US201113092764 A US 201113092764A US 9177349 B2 US9177349 B2 US 9177349B2
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- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
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- G06Q10/10—Office automation; Time management
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q30/00—Commerce
- G06Q30/02—Marketing; Price estimation or determination; Fundraising
- G06Q30/0201—Market modelling; Market analysis; Collecting market data
- G06Q30/0202—Market predictions or forecasting for commercial activities
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q40/00—Finance; Insurance; Tax strategies; Processing of corporate or income taxes
- G06Q40/06—Asset management; Financial planning or analysis
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06Q—INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
- G06Q50/00—Information and communication technology [ICT] specially adapted for implementation of business processes of specific business sectors, e.g. utilities or tourism
- G06Q50/10—Services
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- G06Q50/184—Intellectual property management
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- Y—GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y10—TECHNICAL SUBJECTS COVERED BY FORMER USPC
- Y10S—TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y10S707/00—Data processing: database and file management or data structures
- Y10S707/912—Applications of a database
- Y10S707/923—Intellectual property
- Y10S707/93—Intellectual property intellectual property analysis
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- Y—GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y10—TECHNICAL SUBJECTS COVERED BY FORMER USPC
- Y10S—TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y10S707/00—Data processing: database and file management or data structures
- Y10S707/99931—Database or file accessing
- Y10S707/99933—Query processing, i.e. searching
- Y10S707/99936—Pattern matching access
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- Y—GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y10—TECHNICAL SUBJECTS COVERED BY FORMER USPC
- Y10S—TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
- Y10S707/00—Data processing: database and file management or data structures
- Y10S707/99931—Database or file accessing
- Y10S707/99937—Sorting
Definitions
- the present invention relates to the field of asset valuation and, in particular, to the field of valuing or rating patents and other intellectual property assets.
- Patents play an important role in our economy in encouraging private investment in the development of new technologies that improve productivity and quality of life for everyone.
- Patent and Trademark Office (“PTO”) resulting annually in the issuance of over a hundred fifty-thousand patents.
- Patent owners and applicants pay combined annual fees and costs of nearly a billion dollars (about $6,700 per issued patent) to the PTO to prosecute and maintain their patents and applications. This does not include the additional fees and costs expended for related professional services, such as attorneys fees and drafting charges.
- Intellectual property valuation specialists have traditionally employed three main approaches for valuing patents and other intangible intellectual property assets. These are: (1) the cost-basis approach; (2) the market approach; and (3) the income approach. See, generally, Smith & Par, Valuation of Intellectual Property and Intangible Assets, 2 nd Ed. 1989. Each of these traditional accounting-based approaches produces a different measure or estimate of the intrinsic value of a particular intellectual property asset in question. The choice of which approach is appropriate to use in a given circumstance for a given asset is typically determined by a professional accountant or valuation specialist, taking into consideration a variety of underlying assumptions, type of intellectual property asset(s) involved, and how such asset(s) are to be employed or exploited. Each of these approaches and the limitations associated therewith are briefly discussed below.
- the first and simplest approach is the so-called cost-basis approach.
- This approach is often used for tax appraisal purposes or for simple “book value” calculations of a company's net assets.
- Underlying this valuation method is the basic assumption that intellectual property assets, on average, have a value roughly equal to their cost-basis.
- the supporting rationale is that individuals and companies invest in intellectual property asset(s) only when the anticipated economic benefits of the rights to be secured by the intellectual property asset(s) exceed the anticipated costs required to obtain the asset(s), taking into account appropriate risk factors, anticipated rates of return, etc.
- a rational economic decision-maker would not invest in a patent or other intellectual property asset if he or she did not believe that it would produce expected economic benefits (tangible or otherwise) at least equal to its anticipated cost-basis.
- the cost-basis approach also does not account for the possibility of evolution of products and technology over time and changing business and economic conditions. Rather, the cost-basis approach implicitly assumes a static business and economic environment, providing a fixed value based on actual costs expended at the time of the initial investment without taking into account how the value of that investment might change over time. As a result of these and other short-comings, the cost-basis approach has only limited utility as a method for accurately estimating the intrinsic economic value of patents or other intellectual property assets in real-world business environments.
- the second traditional valuation approach the market approach—seeks to provide real-world indications of value by studying transactions of similar assets occurring in free and open markets.
- the market approach can provide very accurate measures or estimates of intrinsic value.
- Most intellectual property assets are bought or sold in private transactions involving sales of entire businesses or portions of businesses. And even if the financial particulars of each such transaction were readily available, it would be difficult, if not impossible, to disaggregate the intellectual property assets involved in the transaction from the other assets and allocate an appropriate value to them.
- a computer-automated variation of the traditional market approach specifically adapted for rating patent portfolios is described in U.S. Pat. No. 5,999,907.
- a first database is provided containing information describing selected characteristics of a portfolio of patents to be acquired.
- a second database is provided containing empirical data describing selected characteristics of representative patent portfolios having known market values. Estimated valuations are obtained by comparing information in the first data base to information in the second database to determine which known patent portfolio the portfolio to be acquired matches the closest. The value of the closest matching known portfolio is then used as a rough approximation of the value of the portfolio to be acquired.
- the third and perhaps most commonly used accounting-based approach for valuing intellectual property and other intangible assets is the so-called income approach.
- This approach can provide accurate and credible valuations of intellectual property assets in certain situations where an isolated stream (or streams) of economic benefit can be identified and attributed to an intellectual property asset in question.
- the income approach values an intellectual property asset by capitalizing or discounting to present value all future projected revenue streams likely to be derived from its continued exploitation. For example, if a patent asset is licensed under an agreement that provides for a predictable income stream over a certain period of time into the future, then the intrinsic value of the patent may be accurately calculated by taking the net discounted present value of the residual income stream (less any scheduled maintenance costs).
- the intrinsic value of the patent may be calculated by taking the net discounted value of the incremental profit stream (assuming it can be identified) attributable to the patent over the remaining life of the patent or the economic life of the patented technology.
- the income valuation approach can produce very accurate estimates of intrinsic value for certain intellectual property and other intangible assets.
- it is often difficult to identify with certainty and precision an isolated income stream attributable to a particular intellectual property asset in question, let alone an income stream that is predictable over time.
- many intellectual property assets, particularly newly issued patents are not licensed or exploited at all and, therefore, there are no identifiable income streams upon which to base a valuation.
- the present invention compliments and improves upon traditional valuation approaches by providing an objective, statistical-based rating method and system for independently assessing the relative breadth (“B”), defensibility (“D”) and commercial relevance (“R”) of individual patent assets and other intangible intellectual property assets according to a determined statistical accuracy.
- B relative breadth
- D defensibility
- R commercial relevance
- the invention can be used to provide new and valuable information that can be used by patent valuation experts, investment advisors, economists and others to help guide future patent investment decisions, licensing programs, patent appraisals, tax valuations, transfer pricing, economic forecasting and planning, and even mediation and/or settlement of patent litigation lawsuits.
- the invention provides a statistically-based patent rating method and system whereby relative ratings or rankings are generated using a database of patent information by identifying and comparing various characteristics of each individual patent to a statistically determined distribution of the same characteristics within a given patent population. For example, a first population of patents having a known relatively high intrinsic value or quality (e.g. successfully litigated patents) is compared to a second population of patents having a known relatively low intrinsic value or quality (e.g. unsuccessfully litigated patents). Based on a statistical comparison of the two populations, certain characteristics are identified as being more prevalent or more pronounced in one population group or the other to a statistically significant degree.
- a first population of patents having a known relatively high intrinsic value or quality e.g. successfully litigated patents
- a second population of patents having a known relatively low intrinsic value or quality e.g. unsuccessfully litigated patents
- the algorithm may comprise a simple scoring and weighting system which assigns scores and relative weightings to individual identified characteristics of a patent or group of patents determined to have statistical significance. For example, positive scores would generally be applied to those patent characteristics having desirable influence and negative scores would apply to those patent characteristics having undesirable influence on the particular quality or event of interest.
- a high-speed computer is then used to repeatedly test the algorithm against one or more known patent populations (e.g., patents declared to be valid/invalid or infringed/non-infringed). During and/or following each such test the algorithm is refined by adjusting the scorings and/or weightings until the predictive accuracy of the algorithm is optimized.
- results could be reported as statistical probabilities of a desired quality being present, or a future event occurring (patent being litigated, abandoned, reissued, etc.) over a specified period in the future.
- Results could also be provided as arbitrary raw scores representing the sum of an individual patent's weighted scores, which raw scores can be further ranked and reported on a percentile basis within a given patent population and/or upon any other comparative or non-comparative basis as desired.
- the first and second patent populations selected for analysis are preferably roughly the same size and may comprise essentially any two groups of patents (or identifiable subsets of a single group of patents) having different actual or assumed intrinsic values or other qualities of interest.
- the first population may consist of a random sample of 500-1000 patents that have been successfully litigated (found valid and infringed) and the second population may consist of a random sample of 500-1000 patents that have been unsuccessfully litigated (found either invalid or not infringed).
- the first population may consist of a random sample of patents that have been litigated and found valid regardless of whether infringement is also found, and the second population may consist of a random sample of patents that have been found invalid.
- the first population may consist of a random sample of patents that have been litigated and found infringed regardless of the validity finding and the second population may consist of a random sample of patents that have been found not infringed.
- the selection of which study population(s) to use depends upon the focus of the statistical inquiry and the desired quality (e.g., claim scope, validity, enforceability, etc.) of the patent asset desired to be elicited.
- the first and second patent populations may preferably be selected such that one population is known or predicted to have a higher incidence of invalid patents than the other population.
- This information may be readily gathered from published patent decisions of the Federal Circuit and/or the various federal district courts.
- the first population may consist of a random sample of patents declared invalid by a federal court and the second population may consist of a random sample of patents from the general patent population, which are presumed to be valid.
- the second population may consist of a random sample of patents declared “not invalid” by a federal court following a validity challenge.
- the approach is not limited, however, to analyzing litigated patents.
- fruitful comparisons may also be made between litigated patents (presumably the most valuable patents) and non-litigated patents; or between high-royalty-bearing patents and low-royalty-bearing patents; or between high-cost-basis patents and low-cost-basis patents; or between published patent applications and issued patents.
- the number and variety of definable patent populations having different desired qualities or characteristics capable of fruitful comparison in accordance with the invention herein is virtually unlimited. While not specifically discussed herein, those skilled in the art will also recognize that a similar approach may also be used for valuing and/or rating other intellectual property or intangible assets such as trademarks, copyrights, domain names, web sites, and the like.
- the invention provides a method for rating or ranking patents.
- a first population of patents is selected having a first quality or characteristic and a second population of patents is selected having a second quality or characteristic that is different from the first quality or characteristic.
- Statistical analysis is performed to determine or identify one or more patent metrics having either a positive or negative correlation with either said first or second quality to a statistically significant degree.
- a regression model is constructed using the identified patent metric(s). The regression model is iteratively adjusted to be generally predictive of either the first or second quality being present in a given patent.
- the regression model is used to automatically rate or rank patents by positively weighting or scoring patents having the positively correlated patent metrics and negatively weighting or scoring patents having the negatively correlated patent metrics (“positive” and “negative” being used here in the relative sense only).
- the method may be used to generate a patent rating report including basic information identifying a particular reported patent or patents of interest and one or more ratings or rankings determined in accordance with the method described above:
- the invention provides a statistical method for scoring or rating selected qualities of individual patents and for generating a rating report specific to each individual patent rated.
- the method begins by providing a first database of selected patent information identifying and/or quantifying certain selected characteristics of individual patents from a first population of patents having a selected patent quality of interest.
- a second database (or identified subset of the first database) of selected patent information is also provided identifying and/or quantifying certain selected characteristics of individual patents from a second population of patents generally lacking or having reduced incidence of the selected patent quality of interest.
- Statistical analysis is performed to identify one or more characteristics that are statistically more prevalent or more pronounced in either the first or second patent population to a statistically significant degree.
- individual patents may be scored or rated by positively weighting those having the same or similar characteristics and negatively weighting those lacking the same or similar characteristics.
- the method may be used to generate a patent rating report including basic information identifying a particular reported patent or patents of interest and one or more ratings or rankings determined in accordance with the method described above.
- the invention provides a method and automated system for rating or ranking patents or other intangible assets.
- a first population of patents is selected having a first quality or characteristic and a second population of patents is selected having a second quality or characteristic that is different from or believed to be different from the first quality or characteristic.
- a computer accessible database is provided and is programmed to contain selected patent metrics representative of or describing particular corresponding characteristics observed for each patent in the first and second patent populations.
- a computer regression model is constructed and adjusted based on the selected patent metrics. The regression model is operable to input the selected patent metrics for each patent in the first and second patent populations and to output a corresponding rating or ranking that is generally predictive of the first and/or second quality being present in each patent in the first and second patent populations.
- the regression model may then be used to rate or rank one or more patents in a third patent population by inputting into the regression model selected patent metrics representative of or describing corresponding characteristics of one or more patents in the third population.
- the invention provides a high-speed method for automatically scoring or rating a sequential series of newly issued patents as periodically published by the PTO and for determining and storing certain rating or scoring information specific to each patent.
- a substantial full-text copy of each patent in the sequential series is obtained in a computer text file format or similar computer-accessible format.
- a computer program is caused to automatically access and read each computer text file and to extract therefrom certain selected patent metrics representative of or describing particular observed characteristics or metrics of each patent in the sequential series.
- the extracted patent metrics are input into a computer algorithm.
- the algorithm is selected and adjusted to produce a corresponding rating output or mathematical score that is generally predictive of a particular patent quality of interest and/or the probability of a particular future event occurring.
- the rating output or mathematical score is stored in a computer accessible storage device in association with other selected information identifying each rated patent such that the corresponding rating or score may be readily retrieved for each patent in the sequential series.
- the invention provides a method for valuing individual selected patents.
- a patent value distribution curve and/or data representative thereof is provided.
- the shape of the curve generally represents an estimated distribution of patent value according to percentile rankings within a predetermined patent population.
- the area under the curve is generally proportional to the total approximated value of all patents in the predetermined patent population.
- Individual selected patents from the population are ranked in accordance with selected patent metrics to determine an overall patent quality rating and ranking for each individual selected patent.
- the patent value distribution curve is then used to determine a corresponding estimated value for an individual selected patent in accordance with its overall patent quality ranking.
- the method may be used to generate a patent valuation report including basic information identifying a particular reported patent or patents of interest and one or more valuations determined in accordance with the method described above.
- the invention provides an automated method for scoring or rating patents in accordance with user-defined patent metrics and/or patent populations.
- the automated method is initiated by a user selecting a patent, or group of patents, to be rated.
- a full-text computer accessible file of the patent to be rated is retrieved from a central database, such as that currently maintained by the U.S. Patent & Trademark Office at www.uspto.gov.
- a computer algorithm evaluates the full-text file of the patent to be rated and extracts certain selected patent metric(s), which may be predefined, user-defined, or both.
- the algorithm computes a rating number or probability (e.g., between 0 and 1) corresponding to the likely presence or absence of one or more user-defined qualities of interest in the patent to be rated and/or the probability of one or more possible future events occurring relative to the patent. If desired, the rating number or probability can be further ranked against other similar ratings for patents within a selected patent population, which may be predetermined, user-defined, or both.
- a rating number or probability e.g., between 0 and 1
- the method in accordance with the preferred embodiment of the invention is capable of producing multiple independent ratings and/or rankings for a desired patent to be rated, each tailored to a different user-defined inquiry, such as likelihood of the patent being litigated in the future, being held invalid, likelihood of successful infringement litigation, predicted life span of the patent, relative value of the patent, etc.
- FIG. 1 is a simplified schematic system block-diagram illustrating one possible embodiment of a patent rating method and system having features and advantages in accordance with the present invention
- FIG. 2 is a simplified schematic flow chart of one possible multiple regression technique suitable for carrying out the rating method and system of FIG. 1 ;
- FIG. 3 is a graph of percentages of litigated patents according to age, illustrating the declining incidence of patent litigation with patent age
- FIG. 4 is a graph of percentages of litigated patents found to be infringed by a federal district court according to the average number of words per independent claim, illustrating the declining incidence of patent infringement with length of patent claim;
- FIG. 5 is a graph of litigated patents according to technical field, illustrating the incidence of patent infringement holdings by field;
- FIG. 6 is a graph of litigated patents according to technical field, illustrating the incidence of patent invalidity holdings by field
- FIG. 7 is a graph of percentages of litigated patents found to be invalid by a federal district court according to the average age of cited U.S. patent references, illustrating the declining incidence of patent invalidity with citation age;
- FIG. 8 is a graph of overall patent maintenance rates for patents in the general patent population, illustrating increasing rates of patent mortality with age
- FIG. 9 is a graph of patent mortality rates for patents having different numbers of claims, illustrating decreasing mortality rates with increasing number of claims;
- FIG. 10 is a graph of patent mortality rates for patents having different numbers of figures, illustrating decreasing mortality rates with increasing number of figures;
- FIG. 11 is one possible preferred embodiment of a patent rating report generated in accordance with the method and system of FIG. 1 and having features and advantages of the present invention.
- FIG. 12 is one possible example of a patent value distribution curve for use in accordance with one embodiment of a patent valuation method of present invention.
- the utility of the present invention begins with the fundamental observation that not all intellectual property assets are created equal.
- patent assets for example, two patents even in the same industry and relating to the same subject matter can command drastically different royalty rates in a free market, depending upon a variety of factors. These factors may include, for example: (1) the premium or incremental cost consumers are willing to pay for products or services embodying the patented technology; (2) the economic life of the patented technology and/or products; (3) the cost and availability of competing substitute technology and/or products; and (4) the quality of the underlying patent asset.
- the patent rating method and system of the present invention is not proposed to replace conventional legal analysis or traditional valuation methods, but to complement and support the overall evaluative process.
- the present invention provides an objective, statistical-based rating method and system for substantially independently assessing the relative breadth (“B”), defensibility (“D”) and commercial relevance (“R”) of individual patent assets and other intangible intellectual property assets.
- B relative breadth
- D defensibility
- R commercial relevance
- the invention can provide new and valuable information which can be used by patent valuation experts, investment advisors, economists and others to help guide future patent investment decisions, licensing programs, patent appraisals, tax valuations, transfer pricing, economic forecasting and planning, and even mediation and/or settlement of patent litigation lawsuits.
- Such information may include, for example and without limitation: statistically calculated probabilities of particular desired or undesired qualities being present; statistical probabilities of certain future events occurring relative to the asset in question; ratings or rankings of individual patents or patent portfolios; ratings or rankings of patent portfolios held by public corporations; ratings or rankings of patent portfolios held by pre-IPO companies; ratings or rankings of individual named inventors; and ratings or rankings of professional service firms, law firms and the like who prepare, prosecute and enforce patents or other intellectual property assets.
- the present invention provides a statistical patent rating method and system for rating or ranking patents based on certain selected patent characteristics or “patent metrics.”
- patent metrics may include any number of quantifiable parameters that directly or indirectly measure or report a quality or characteristic of a patent.
- Direct patent metrics measure or report those characteristics of a patent that are revealed by the patent itself, including its basic disclosure, drawings and claims, as well as the PTO record or file history relating to the patent.
- Specific patent metrics may include, for example and without limitation, the number of claims, number of words per claim, number of different words per claim, word density (e.g., different-words/total-words), length of patent specification, number of drawings or figures, number of cited prior art references, age of cited prior art references, number of subsequent citations received, subject matter classification and sub-classification, origin of the patent (foreign vs. domestic), payment of maintenance fees, prosecuting attorney or firm, patent examiner, examination art group, length of pendency in the PTO, claim type (i.e. method, apparatus, system), etc.
- Indirect patent metrics measure or report a quality or characteristic of a patent that, while perhaps not directly revealed by the patent itself or the PTO records relating to the patent, can be determined or derived from such information (and/or other information sources) using a variety of algorithms or statistical methods including, but not limited to, the methods disclosed herein.
- Examples of indirect patent metrics include reported patent litigation results, published case opinions, patent licenses, marking of patented products, and the like.
- Indirect patent metrics may also include derived measures or measurement components such as frequency or infrequency of certain word usage relative to the general patent population or relative to a defined sub-population of patents in the same general field.
- each word and/or word phrase in a patent claim could be assigned a point value according to its frequency of use in a randomly selected population of similar patents in the same general field.
- Statistically common words or word phrases such as simple articles, pronouns and the like could receive relatively low point values.
- Uncommon words or word phrases could receive relatively high point values.
- the total point score for each claim could then be taken as an indication of its relative breadth or narrowness based on the total number and statistical prevalence of each of the words contained in the claim.
- different amounts of points can be accorded to claim words or word phrases based on whether or not they also appear in the patent specification. Multiple claims and/or patents could also be combined into a single analysis, if desired.
- relative ratings or rankings are generated using a database of selected patent information by identifying and comparing various relevant characteristics or metrics of individual patents contained in the database.
- a first population of patents having a known or assumed relatively high intrinsic value e.g. successfully litigated patents
- a second population of patents having a known or assumed relatively low intrinsic value e.g. unsuccessfully litigated patents. Based on the comparison, certain characteristics are identified as statistically more prevalent or more pronounced in one population group or the other to a significant degree.
- the algorithm is used to predict and/or provide statistically determined probabilities of a desired value or quality being present and/or of a future event occurring, given the identified characteristics of an individual identified patent or group of patents.
- the algorithm may comprise a simple scoring and weighting system which assigns scores and relative weightings to individual identified characteristics of a patent or group of patents determined (or assumed) to have statistical significance. For example, positive scores could generally be applied to those patent characteristics determined or believed to have desirable influence and negative scores could be applied to those patent characteristics determined or assumed to have undesirable influence on the particular quality or event of interest.
- a high-speed computer is preferably used to repeatedly test the algorithm against one or more known patent populations (e.g. patents declared to be valid/invalid or infringed/non-infringed).
- the algorithm is refined (preferably automatically) by iteratively adjusting the scorings and/or weightings assigned until the predictive accuracy of the algorithm is optimized. Adjustments can be made automatically in an orderly convergence progression, and/or they can by made randomly or semi-randomly. The latter method is particularly preferred where there are any non-linearities in the equations or rules governing the algorithm.
- Algorithm results are preferably reported as statistical probabilities of a desired quality being present, or a future event occurring (e.g., patent being litigated, abandoned, reissued, etc.) during a specified period in the future.
- Algorithm results could also be provided as arbitrary raw scores representing the sum of an individual patent's weighted scores, which raw scores can be further ranked and reported on a percentile basis or other similar basis as desired.
- the statistical accuracy of the algorithm is tracked and reported over time and periodic refinements are made as more and more data is collected and analyzed.
- FIG. 1 is a simplified block diagram of one possible embodiment of a patent rating method and automated system 100 having features and advantages in accordance with the present invention.
- the system is initiated at the START block 110 .
- Patent Population “A” and Patent Population “B” are selected to have different known or assumed intrinsic values and/or qualities such that a fruitful comparison may be made.
- Population “A” may comprise a random or semi-random (e.g., representative) sample of successfully litigated patents and/or individual patent claims.
- Population “B” may comprise a random or semi-random sample of unsuccessfully litigated patents and/or individual patent claims. In that case, Population “A” patents/claims may be assumed to have higher intrinsic value than Population “B” patents/claims.
- one study population may comprise a random or semi-random sample of patents selected from the general patent population and having a representative “average” value or quality.
- the other study population may comprise, for example and without limitation, a random or semi-random sample of patents selected from a sub-population consisting of all patents for which 1 st , 2 nd or 3 rd maintenance fees have been paid; or all patents that have been licensed for more than a predetermined royalty rate; or all patents that have been successfully reissued/reexamined; or all patents that have related counterpart foreign patents; or all patents that have been subsequently cited by other patents at least X times; etc.
- the number and variety of possible ways to define study populations of interest in accordance with the invention are virtually limitless.
- a comparison is made between the selected characteristics C a of Patent Population “A” and the same selected characteristics C b of Patent Population “B”. Based on the comparison, certain characteristics are identified at block 144 as being statistically more prevalent or more pronounced in one population or the other to a significant degree. This comparison can be performed and the statistical significance of observed differences determined by applying known statistical techniques. Thus, certain statistically relevant characteristics of each study population can be readily identified and described mathematically and/or probabilistically.
- a multiple regression model is constructed using the identified statistically relevant characteristics determined at block 144 .
- Multiple regression modeling is a well-known statistical technique for examining the relationship between two or more predictor variables (PVs) and a criterion variable (CV).
- the predictor variables or independent variables
- the predictor variables describe or quantify the selected relevant characteristics of a particular patent population, e.g., class/sub-class, number of independent claims, number of patent citations, length of specification, etc.
- Criterion variables (or dependent variables) measure a selected quality of a particular patent population, such as likelihood of successful litigation (either validity or infringement).
- Multiple regression modeling allows the criterion variable to be studied as a function of the predictor variables in order to determine a relationship between selected variables. This data, in turn, can be used to predict the presence or absence of the selected quality in other patents.
- CV m criterion variable (e.g., quality desired to be predicted)
- the relevant characteristics PV n of patent P n are identified and plugged into the regression model at block 160 .
- the resulting predicted value or score CV m representing the quality of interest for patent P n , is then outputted to a data output file 178 , printer or other output device, as desired.
- the system terminates at STOP block 180 .
- multiple regression modeling is a statistical technique for examining the relationship between two or more predictor variables (PVs) and a criterion variable (CV).
- the predictor variables or independent variables
- CV criterion variable
- the predictor variables or independent variables
- Criterion variables measure a selected quality of interest of a particular patent population, such as likelihood of successful litigation, validity or infringement.
- Multiple regression modeling allows the criterion variable to be studied as a function of the predictor variables in order to determine a relationship between selected variables. This data, in turn, can be used to predict the presence or absence of the selected quality in other patents.
- the coefficients a, b can be determined by iteration or other means so that the sum of squared errors is minimized in accordance with the well-known ordinary least squares (OLS) technique. Given least squares fit, the mean of the errors will be zero.
- OLS ordinary least squares
- FIG. 2 is a simplified schematic flow chart 200 of one such suitable multiple regression technique that may be employed in carrying out the present invention.
- the flow chart begins at the START block 202 .
- certain system variables are initialized. These include multi-regression coefficients a, b, c and d, incremental step changes ⁇ a, ⁇ b, ⁇ c and ⁇ d for each coefficient a, b, c and d, respectively, and various counters CO (#correct predictions), IN (# incorrect predictions), n (# patent in population) and m (loop repeat count).
- CO #correct predictions
- IN # incorrect predictions
- n # patent in population
- m loop repeat count
- the characteristics X 1 , X 2 , X 3 have been previously selected and determined to have a statistically significant impact on the selected patent quality desired to be measured.
- the observed patent quality Y of patent n is inputted into the system.
- the patent quality of interest is the validity or invalidity of the patent as determined by a final judgement of a court.
- the measured patent quality could be any one or more of a number of other qualities of interest such as discussed above.
- the system calculates a predicted patent quality such as the probability that the patent in question is valid P(valid).
- the system at step 212 determines an expected quality Y′ based on the probability P(valid). In particular, if P(valid) is calculated to be greater than 0.5 (>50%) then the expected outcome Y′ is that the patent is “VALID” as indicated by block 214 . If P(valid) is calculated to be less than 0.5 ( ⁇ 50%) then the expected outcome Y′ is that the patent is “INVALID” as indicated by block 216 .
- SA statistical accuracy
- the statistical accuracy SA(m) is a simple and easily calculated measure of how much observed data was accurately accounted for (i.e. correctly predicted) by the regression model (m). This is a very basic measure of the predictive accuracy of the regression model and is described herein by way of example only. If desired, a more sophisticated approach, such as variance analysis, could also be used to accurately measure the predictive power of a given regression model (m).
- Variance analysis measures the variance in the criterion variable (e.g., Y′) as a function of each of the predictor variables (e.g., X 1 , X 2 , X 3 ).
- the measured variance in the criterion variable (Y′) can be broken into two parts: that predicted by one or more of the selected predictor variables and that variance not predicted by the selected predictor variables. The latter is often referred to as “error variance.”
- the total predicted variance is the amount of variance accounted for by the regression model. For instance, if the predicted variance is 0.78—this means the regression model is accounting for 78% of the possible variance.
- Predicted variance can also be increased by adding more predictor variables to the regression model. But, as the number of predictor variables in the regression model increases beyond a certain point there is a risk that the predicted variance may become artificially inflated, indicating that the model is purporting to account for variance that is not actually accounted for in the population.
- This problem may be controlled by selecting an appropriate number of predictor variables in a given model in accordance with the number of samples in the population. Preferably, the number of predictor variables is no more than about 5-10% of the total number of samples in a given population and is most preferably less than about 1-3% of the total population.
- the number of predictor variables is no more than about 50-100 and most preferably no more than about 10 to 30 total, or between about 15-25.
- an adjusted predicted variance may be calculated using well-known techniques which take into account both the number of predictor variables and the sample size.
- Decision block 230 compares the calculated statistical accuracy SA(m) of the current regression model (m) to the statistical accuracy SA(m ⁇ 1) of the previous regression model (m ⁇ 1). If the statistical accuracy SA(m) indicates improvement, then decision block 230 directs the system to coefficient adjustment block 227 .
- This block increments or decrements one or more of the coefficients (a, b, c and d) by a predetermined amount ( ⁇ a, ⁇ b, ⁇ c and ⁇ d).
- the adjustment amounts (+ or ⁇ ) are periodically determined by the system 200 to accurately converge the regression model toward maximum statistical accuracy SA. This may be done in a variety of ways. One simple convergence technique is described below.
- decision block 230 determines that SA(m) ⁇ SA(m ⁇ 1), this indicates that the current regression model (m) is a worse predictor of the desired patent quality than the previous regression model (m ⁇ 1). Therefore, a different adjustment is needed to be made to the coefficients a, b, c, and/or d in order to cause the system to reconverge toward the optimal solution providing for maximum predictive accuracy. This is done by directing the system to blocks 232 - 268 to test the impact of various changes to each predictor variable (a, b, c, d) and to change one or more of the coefficient adjustment amounts ( ⁇ a, ⁇ b, ⁇ c and ⁇ d) as necessary to reconverge on the optimal solution.
- decision blocks 232 , 242 , 252 and 262 first preferably determine which of the adjustment amounts ( ⁇ a, ⁇ b, ⁇ c and ⁇ d) is greatest in magnitude. For example, if it is determined that ⁇ a is greater than each of the adjustment amounts ⁇ b, ⁇ c and ⁇ d, then decision block 232 directs the system to block 234 .
- decision block 236 directs the system to block 238 .
- decision block 236 directs the system to the next decision block 242 to determine whether an adjustment to one of the other coefficients might improve the accuracy of the regression model.
- the system stops at END block 270 whereby the data may be extracted and studied or used to provide quality ratings or rankings of patents outside (or inside) the study populations as described above. If there are any non-linear relationships between the criterion variable and any predictor variable(s), it is preferred to randomize the variable coefficients at least periodically and reconverge toward an optimal solution in order to fully explore all possible optimal solutions.
- Multiple regression modeling is particularly well suited to carrying out the rating methods of the present invention.
- the methodology allows one not only to determine a statistical relationship between a criterion variable (CV) of interest and a number of predictor variables (PVs), it also allows one to determine the independent contributions of each predictor variable in the model by allowing for partitioning of variance. In other words, one can determine how much variance in the criterion variable is accounted for by a specific predictor variable. This can be accomplished, for example, by removing the PV in question from the model and then determining if the correlation predicted by the model significantly declines when the predictor variable is removed from the equation and the other predictor variables remain.
- CV criterion variable
- PVs predictor variables
- Partitioning of variance is also useful in detecting possible collinearity or multi-collinearity between two of more predictor variables.
- Collinearity occurs when all or most of the variance in one predictor variable is accounted for by one other predictor variable.
- Multi-collinearity exists when several predictor variables combined account for all or most of the variance of another predictor variable. While not directly detrimental to the utility of the invention, collinearity or multi-collinearity can create problems where it is desired to accurately determine the slope or direction of an individual regression line for a particular predictor variable.
- Collinearity or multi-collinearity can be reduced or eliminated by removing superfluous predictor variables and/or by combining two or more predictor variables into a single normalized predictor variable.
- One possible application of the present invention is to identify and study relevant characteristics from a sample of litigated patents to determine and measure those patent metrics that are predictive of a possible future event, such as a patent being litigated.
- Patent litigation is the ultimate attestation of patent value.
- a patent plaintiff is faced with enormous legal costs to bring and prosecute a patent infringement action.
- the decision to invest such substantial sums to enforce a patent is potentially (although, not necessarily) a strong indicator of the strength and value of the underlying patent asset.
- FIG. 3 is a graph of the average age of a selected sample of litigated patents. This graph indicates that most patents (>50%) that are litigated are litigated within five years from the date of issuance. The decrease in the incidence of patent litigation with age suggests that patents may have a diminishing value over time. This is generally consistent with what one might expect as newer technology replaces older technology. Thus, using the graph of FIG. 3 and knowing the age of a particular patent(s) of interest (all other things being assumed equal), one can estimate the probability of the patent(s) being litigated within one year, two years, three years, etc., in the future.
- Each of the patent metrics identified above is anticipated to have a statistically significant impact on the probability of a patent being litigated in the future.
- By undertaking a statistical study of these and other patent metrics and by constructing a suitable regression model in accordance with the invention disclosed herein one can calculate an estimated statistical probability of a given patent being litigated during a predetermined period of time in the future based on the identified patent characteristics. If desired, a numerical rating or ranking may be assigned to each patent indicating the relative likelihood of litigation.
- Another possible application of the present invention is to identify and study relevant characteristics from a sample of litigated patents to determine and measure those patent metrics that are predictive of a particular desired outcome in litigation (e.g., a finding of infringement and/or invalidity).
- Table 1 summarizes the incidence of final judgements of infringement for 665 reported patent infringement cases brought in the U.S. federal district courts between 1987 and 1998. The results are divided according to whether one or more of the asserted claim(s) contained a “means” limitation.
- FIG. 4 is a graph 320 of percentages of litigated patents found to be infringed by a federal district court between 1987 and 1998, illustrating a statistical relationship between the incidence of infringement and the average number of words or “word count” per independent claim.
- the graph generally illustrates a declining incidence of patent infringement with increasing word count. Again, this supports the generally-held notion that longer claims are narrower than shorter claims.
- those skilled in the art will recognize that more sophisticated relationships could also be established and characterized statistically.
- a modified word count metric comprising only non-repeated words per claim could be used.
- each word and/or word phrase in a patent claim could be assigned a point value according to its frequency of use in a randomly selected population of similar patents in the same general field.
- Statistically common words or word phrases such as simple articles, pronouns and the like would receive relatively low point values.
- Uncommon words or word phrases would receive relatively high point values.
- the total point score for each claim would then be an indication of its relative breadth or narrowness based on the total number and statistical prevalence of each of the words contained in the claim.
- different amounts of points can be accorded to claim words or word phrases based on whether or not such words or word phrases also appear in the patent specification. Multiple claims and/or patents could also be combined into a single such analysis, if desired.
- a “relatedness index” metric which characterizes the relatedness of each claim to one or more other claims of the patent (and/or one or more other patents). All other things being equal, it is expected that a patent having two or more claims that are highly related to one another (e.g., having substantially overlapping claim coverage) would be narrower in overall scope than a patent having two or more claims that are substantially dissimilar from one another (and, therefore, likely cover different subject matter).
- One convenient way to formulate a relatedness index is to compare the number of words that are common to each claim versus the number of words that are unique to each claim.
- a first claim of interest may contain 95% of the same words in common with a second claim of interest (Claim 2 ). Therefore, the two claims could be described as having a relatedness index (R 1,2 ) of 95% or 0.95.
- a third claim of interest may contain only 45% of the same words in common with the first claim (Claim 1 ). Therefore, these two claims could be described as having a relatedness index (R 1,3 ) of 45% or 0.45. More sophisticated approaches could further weight or score each word in accordance with frequency of use as described above, and/or could provide for matching of similar or synonymous words.
- a relatedness index metric could also be developed and used to compare the relatedness or apparent relatedness of one or more patent specifications. This could be useful, for example, in identifying related or similar patents within a portfolio.
- FIG. 5 is a graph 340 of litigated patents according to technical field, illustrating the incidence of patent infringement holdings by field.
- FIG. 6 is a graph 360 of litigated patents according to technical field, illustrating the incidence of patent invalidity holdings by field.
- the numbers above each bar indicate the sample size of each patent population reported.
- Each of these graphs illustrates a statistical relationship between the general technical field of an invention and the incidence of validity or infringement holdings in litigation.
- FIG. 7 is a graph 380 of percentages of litigated patents found to be invalid by a federal district court according to the average age of U.S. patent references cited therein.
- the graph 380 illustrates a declining incidence of patent invalidity with citation age.
- curve 390 The slope (m) and Y-axis intercept (b) of curve 390 were determined by trial and error to produce an ordinary least squares fit to the data reported by graph 380 .
- the curve 390 (and the resulting formula thereof) is generally representative of the statistical relationship between average citation age and incidence of patent validity in litigation.
- the identified patent metrics are anticipated to have a statistically significant impact on the probability of a patent being litigated successfully or unsuccessfully.
- a statistical study of these and other identified patent metrics and by constructing a suitable regression model in accordance with the invention disclosed herein one can accurately calculate an estimated statistical probability of a given patent being successfully litigated (found valid and/or infringed), taking into consideration all of the identified patent characteristics and statistical relationships simultaneously.
- a numerical rating or ranking may be automatically calculated and assigned to each patent indicating the relative likelihood of a particular event or quality. Such rating may be provided for the patent as a whole or, alternatively (or in addition), individual ratings may be provided for one or more individual claims of the patent, as desired.
- patentees are required to pay periodic maintenance fees during the term of a patent to maintain the patent in force. In most countries, these consist of fixed annual fees of $200-300 per year paid to the government patent office to maintain a patent in force. In the United States, maintenance fees are paid every four years and escalate progressively from $525/$1,050 to maintain a patent in force beyond the fourth year, to $1,050/$2,100 to maintain a patent in force beyond the eighth year, to $1,580/$3,160 to maintain a patent in force beyond the twelfth year. Patentees that qualify as a “small entity” pay the smaller amounts; all others pay the larger amounts.
- Another possible application of the present invention is to identify and study relevant characteristics of a sample population of 20,000-80,000 patents that have been maintained beyond the first, second or third maintenance periods as against a sample population of 20,000-80,000 patents that have not been maintained or are abandoned prior to the expiration of their statutory term.
- a similar degree of statistical accuracy the particular relationship or contribution provided by one or more individual patent metrics of interest. This may be accomplished, for example, using variance partitioning and/or other similar statistical analysis techniques.
- FIG. 8 is a graph of patent maintenance rates for a random sample population of patents issued in 1986. This graph 400 indicates that approximately 83.5% of such patents were maintained beyond the fourth year, approximately 61.9% of the patents were maintained beyond the eighth year and approximately 42.5% of the patents were maintained beyond the twelfth year. In other words, all but about 42.5% of the sample population were abandoned or allowed to expire before the full statutory patent term. This corresponds to an overall average patent mortality (abandonment) rate of approximately 58.5%. From this and/or other similar data one can formulate certain general expectations or probabilities as to whether a patent will likely be maintained or abandoned in the future.
- More specific expectations and probabilities can be formulated by identifying and/or measuring those specific patent metrics associated with patent populations having either high or low mortality rates. For example, the data reveals that Japanese originating patents generally have lower mortality rates than domestic originating patents (44.7% vs. 58.5%). The data also reveals that patents classified by the PTO in different classes and/or subclasses can have significantly different mortality rates. For example, Table 2 below illustrates various observed mortality rates for patents categorized in several selected PTO classes:
- patent mortality rates can vary dramatically depending upon the general subject matter of the patented invention as determined by the PTO classification system. Thus, one can reasonably conclude that, all other things being equal, certain classes of inventions are probably more valuable (more likely to be maintained) or less valuable (less likely to be maintained) than certain other classes of inventions. From this and/or other similar data one can formulate specific and/or more accurate expectations or probabilities as to whether a particular patent having certain identified characteristics will likely be maintained or abandoned in the future.
- FIG. 9 illustrates a similar observed correlation between the number of claims contained in a patent and the patent mortality rate.
- the average mortality rate is observed to be about 66.3%.
- the mortality rate is observed to drop to 49.3%. Again, this indicates that, all other things being equal, patents having more claims are probably more valuable (more likely to be maintained) than patents having less claims.
- FIG. 10 illustrates another similar observed correlation between the number of figures or drawings contained in a patent and the patent mortality rate.
- the average mortality rate is observed to be about 62.7%.
- the mortality rate is observed to drop to 46.6%.
- Each of the patent metrics identified above is anticipated to have a statistically significant impact on the probability of a patent being maintained or abandoned, litigated successfully or unsuccessfully, etc.
- a statistical study of these and other patent metrics and by constructing a suitable regression model or algorithm in accordance with the invention disclosed herein one can calculate with a statistically determined accuracy an estimated probability of a particular patent quality or a particular event occurring affecting a given patent.
- a numerical rating or ranking may be assigned to each patent indicating its relative value or score. Multiple ratings or rankings may also be provided representing different qualities of interest or probabilities of particular future events occurring.
- Patent ratings or rankings as taught herein may be compiled and reported in a variety of suitable formats, including numerical ratings/rankings, alphanumeric ratings/rankings, percentile rankings, relative probabilities, absolute probabilities, and the like. Multiple ratings or rankings may also be provided corresponding to different patent qualities of interest or specific patent claims.
- FIG. 11 illustrates one possible form of a patent rating and valuation report 700 that may be generated in accordance with a preferred embodiment of the invention.
- the report 700 contains some basic data 710 identifying the patent being reported, including the patent number, title of the invention, inventor(s), filing date, issue date and assignee (if any).
- individual patent ratings 720 are also provided, including overall patent breadth (“B”), defensibility (“D”), and commercial relevance (“R”).
- Breadth and Defensibility ratings are preferably generated by a computer algorithm that is selected and adjusted to be predictive of known litigation outcomes (e.g., infringement/non-infringement and validity/invalidity) of a selected population of litigated patents based on various comparative patent metrics.
- Relevance ratings are preferably generated using a computer algorithm selected and adjusted to be predictive of patent maintenance rates and/or mortality rates based on various comparative patent metrics including, preferably, at least one comparative metric based on a normalized forward patent citation rate (normalized according to patent age). If desired, each of the B/D/R ratings can be statistically adjusted relative to the remaining ratings using known statistical techniques so as to minimize any undesired collinearity or overlap in the reported ratings.
- ratings 720 are provided on a scale from 1 to 10. However, a variety of other suitable rating scales may also be used with efficacy, such as numerical rankings, percentile rankings, alphanumeric ratings, absolute or relative probabilities and the like. If desired, individual ratings or rankings 720 may also be combined using a suitable weighting algorithm or the like to arrive at an overall score or rating 730 for a given patent, patent portfolio or other intellectual property asset.
- the particular weighting algorithm used would preferably be developed empirically or otherwise so as to provide useful and accurate overall patent rating information for a given application such as investment, licensing, litigation analysis, etc.
- overall ratings can be separately collected and tabulated for use as a handy reference source.
- overall patent ratings can be published and updated periodically for all patents currently in force and/or for all newly issued patents published by the PTO, providing simple and useful information to those who desire to use it.
- Such information could also advantageously be stored on a searchable database accessible through an Internet-based web server or the like.
- the invention may be modified and adapted to provide high-speed, automated scoring or rating of a sequential series of newly issued patents periodically published by the PTO.
- a substantial full-text copy of each patent in the sequential series is obtained in a computer text file format or similar computer-accessible format.
- a computer program is caused to automatically access and read each computer text file and to extract therefrom certain selected patent metrics representative of or describing particular observed characteristics or metrics of each patent in the sequential series.
- the extracted patent metrics are input into a previously determined computer regression model or predictive algorithm that is selected and adjusted to calculate a corresponding rating output or mathematical score that is generally predictive of a particular patent quality of interest and/or the probability of a particular future event occurring.
- a rating output or mathematical score is directly calculated from the extracted metrics using a series of predefined equations, formulas and/or rules comprising the algorithm.
- the results are then preferably stored in a computer accessible memory device in association with other selected information identifying each rated patent such that the corresponding rating may be readily referenced or retrieved for each patent in the sequential series.
- the rating method in accordance with the modified embodiment of the invention described above directly calculates (for each patent or group of patents) the mathematical score or rating from the patent metrics themselves, there is no need to access related stored data, such as comparative representative patent data, from an associated database.
- the method can be carried out very rapidly for each patent in the sequential series.
- the automated rating method described above can preferably be carried out in less than about 1-3 minutes per patent, more preferably in less than about 30-45 seconds per patent, and most preferably in less than about 5-10 seconds per patent.
- the predictive algorithm operates without requiring access to any comparative representative data, it may be easily stored, transferred, transported or otherwise communicated to others without the need to also store, transfer, transport or communicate the underlying comparative data used to develop the algorithm.
- each claim of the reported patent may be analyzed and rated separately if desired.
- each claim 1 - 9 in the example illustrated in FIG. 11 is preferably indicated as being either independent (“I”) or dependent (“D”), as the case may be.
- I independent
- D dependent
- only the independent claims of a reported patent may be rated if desired.
- Individual ratings 740 , 750 and 755 in report 700 preferably provide numerical ratings (1-10) of the likely breadth (“B”), defensibility (“D”), and relevance (“R”) of each claim of the reported patent (and/or the patent as a whole).
- BDR defensibility
- R relevance
- Such “BDR” ratings may alternatively be expressed in a variety of other suitable formats, such as letters, symbols, integer numerals, decimal numerals, percentage probabilities, percentile rankings, and the like.
- a letter scoring system e.g., A-E
- a BDR rating of “B/A/A” would represent a “B” rating for breadth, and “A” ratings for both defensibility and relevance.
- An overall rating could then be derived from the individual BDR component ratings using a suitable conversion index rating system as generally illustrated below in Table 4:
- “x” represents an individual component rating (either B, D or R) that is lower than the highest of the remaining rating component(s) such that only the highest component rating(s) are reflected in the overall rating.
- a BDR rating of A/A/B or A/B/A would each produce an overall rating of “AA.”
- a BDR rating of C/B/C or B/D/E would each produce an overall rating of “B.”
- various additional rules and/or weighting formulas may be used to adjust the overall rating assigned in accordance with this system. For example, if one or more of the low component ratings “x” is two or more rating levels below the highest component rating(s) then the overall rating can be decreased by one increment.
- a BDR rating of C/B/C would produce an overall rating of “B” whilst a BDR rating of B/D/E would produce an overall rating of “CCC” or “CC”.
- the overall rating is assigned some arbitrary baseline rating, such as “D” or “C” or “S” and/or the like.
- estimated maintenance rates 760 are also provided and are indicated as percentage probabilities for each maintenance period.
- maintenance data may be provided in a number of other suitable formats, as desired, such as percentile rakings, absolute or relative probabilities and the like.
- various confidence levels may be calculated and displayed for each of the reported probabilities 760 , if desired.
- the report 700 may further include an estimated valuation range 770 or expected value of the reported patent.
- Such patent valuation 770 may be based on a variety of suitable techniques that preferably take into account the rating information provided herein. For example, a modified cost-basis approach could be used whereby the cost-basis is multiplied by a suitable discount or enhancement factor corresponding to the rating(s) that the patent receives in accordance with the methods disclosed herein. In this manner, patents that receive higher-than-average ratings would be valued at more than their cost basis. Conversely, patents that receive lower-than-average ratings would be valued at less than their cost basis.
- a modified income valuation approach could be used whereby a hypothetical future projected income stream or average industry royalty rate is multiplied by a suitable discount or enhancement factor corresponding to the rating that the patent receives in accordance with the methods disclosed herein. In this manner, patents that receive higher ratings would be valued at higher than industry averages. Conversely, patents that receive lower ratings would be valued at lower than industry averages.
- Another preferred approach would be to allocate patent value based on a percentile ranking of patents as determined herein.
- an approximated distribution of relative patent values is determined from existing patent renewal data, patent litigation data and/or the like. From this data, a value distribution curve can be constructed such as illustrated in FIG. 12 .
- the shape of the curve generally represents an estimated distribution (e.g., on a percentile basis) of approximated patent values spread over a range from the very highest-value patents to the very lowest-value patents. See also, Hall, “Innovation and Market Value,” Working Paper 6984 NBER (1999) (suggesting an extremely skewed value distribution whereby a few patents are extremely valuable, while many others are worth little or almost nothing).
- the area under the curve 800 preferably corresponds to the total estimated value of all patents in a given patent population (e.g., all U.S. patents currently in force). This can be readily estimated or approximated by applying suitable macro-economic analysis. For example, it may be approximated as a percentage of total GNP, or as a percentage of total market capitalization of publicly traded companies, or as a multiple of annual budgeted PTO fees and costs, and/or the like.
- Patents having the highest percentile rankings in accordance with the rating methods disclosed herein would then be correlated to the high end of the value distribution curve 800 . Conversely, patents having the lowest percentile rankings in accordance with the rating methods disclosed herein would then be correlated to the low end of the value distribution curve 800 .
- allocative valuation approach brings an added level of discipline to the overall valuation process in that the sum of individual patent valuations for a given patent population cannot exceed the total aggregate estimated value of all such patents.
- fair and informative valuations can be provided based on the relative quality of the patent asset in question without need for comparative market data of other patents or patent portfolios, and without need for a demonstrated (or hypothetical) income streams for the patent in question.
- Estimated valuations are based simply on the allocation of a corresponding portion of the overall patent value “pie” as represented by each patents' relative ranking or position along value distribution curve 800 .
- any one or more of the above valuation techniques can be combined or averaged to produce appropriate valuation ranges and/or various blended valuation estimates, as desired.
- Various confidence levels may also be calculated and reported for each of the reported value ranges 770 .
- several different value ranges can be calculated according to different desired confidence levels.
- the present invention is ideally suited for Internet-based applications.
- the invention would be made available to Internet users on the World Wide Web (“the web”), or a similar public network, and would be accessible through a web page.
- the web World Wide Web
- Various services, embodying different aspects of the present invention, could be made available to users on a subscription or a pay-per-use basis.
- users would preferably have access to automated patent ratings, consolidated patent ratings (i.e. grouped by technology, business sector, industry, etc.), and a host of ancillary information regarding particular patents or groups of patents.
- Ancillary information may include, for example, full-text searchable patent files, patent images, bibliographic data, ownership records, maintenance records, and the like.
- a user would preferably be able to enter or “click” on the number of a patent he or she was interested in and obtain, in very short order (e.g., in less than about 1-5 minutes), a comprehensive rating report as described above.
- the user would be able to control most, if not all, of the variables in the rating calculation.
- this preferred embodiment would include a series of correlation tables which allow the user to retrieve patent numbers based on ownership, field of use, or even specific commercial products. Thus, it would be possible for a user to request reports on all patents that have been issued or assigned to a particular company in the past 5 years.
- Patent marking data could be gathered either through private voluntary reporting by manufacturers of such products and/or it may be gathered through other available means, such as automated web crawlers, third-party reporting or inputting and the like.
- Patent marking data e.g., the presence or absence of a patent notice on a corresponding commercial product
- other relevant data e.g., sales volume, sales growth, profits, etc.
- patents that are being actively commercialized are more valuable than “paper patents” for which there is no corresponding commercial product.
- the patent marking database can also include the necessary URL address information and/or the like which will allow users to hot-link directly to a third-party web page for each corresponding product and/or associated product manufacturer.
- users would be allowed to request automatic updates and patent ratings according to certain user-defined parameters.
- a user who is particularly interested in the XYZ company could request an automatic updated report—sent to him substantially contemporaneously (preferably within a few days, more preferably within about 2-3 hours, and most preferably within less than about 5-10 minutes) via e-mail and/or facsimile—whenever the XYZ company obtains a newly issued patent.
- a similar updated report could be generated and sent any time a new patent issued or a new application is published in a particular technology field or class of interest.
- the updates would preferably contain a synopsis of each new patent or published application, as well as a patent rating performed according to that user's preferred criteria.
- Updated reports for each rated patent could also be generated periodically whenever one or more identified patent metrics changed (e.g., forward citation rate, change of ownership, litigation, etc.). Such automated updating of rating information would be particularly important to investment and financial analysts, who depend on rapid and reliable information to make minute-by-minute decisions. Updated report(s) could also be generated and published each week for all newly issued patents granted by the PTO for that current week. Thus, in accordance with one preferred embodiment of the invention, informative patent rating and/or ranking information may be provided within days or hours of a new patent being issued and published by the PTO.
- Another service that may be provided in a preferred Internet-based application of this invention is a user-updated information database.
- certain users and/or all users would be allowed to post information they believe is pertinent to a particular patent or group of patents.
- Such information might include prior art that was not cited in the patent, possible license terms, potential problems with the written description or claims of the patent, information about the inventors, information relating to sales of patented products prior to the filing date, legal opinions, related litigation, and any other information that might be relevant to the patent.
- the information would preferably be stored and displayed in association with each particular patent to which it is relevant.
- each patent would, in effect, have its own bulletin board or note pad associated with it, upon which users may post relevant information.
- Other information could also be displayed, such as license terms available, commercial product information, other patents of interest, electronic file wrappers, hot-links to other sites, and the like.
- submitters could also provide their own rating or ranking of the patent in question, such that patents could be essentially self-rated by users.
- only qualified users or selected patent analysts
- the qualification process could be as simple as filling out a questionnaire or as thorough as an independent verification of credentials.
- the present invention is also well suited for incorporation into a newsletter service, such as the numerous financial newsletters currently available to Wall Street investors.
- the rating system described herein would preferably be applied to a pre-defined subset of issued patents—for instance, all patents newly issued to “Fortune 500” companies or designated “Pre-IPO” companies.
- Overall patent ratings would be denoted with a standardized system, such as a 1-10 scale, four stars, bond-style ratings, “BDR” ratings and/or the like.
- requested reports would be automatically generated and e-mailed to each subscriber on a periodic basis and/or on an event-triggered basis, as desired. In this way, subscribers would be provided with a standardized method of comparing patent portfolios of various companies from week to week.
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Abstract
Description
C a ={A 1 ,A 2 . . . A n}
-
- An=an individual selected characteristic of Pat. Pop. “A”
C b ={B 1 ,B 2 . . . B n}
-
- Bn=an individual selected characteristic of Pat. Pop. “B”
CVm=f{PV1,PV2 . . . PVn}
-
- PVn=predictor variable (e.g., statistically relevant characteristic)
C c ={C 1 ,C 2 . . . C n}
-
- Cn=an individual selected characteristic of patent Pn
Y=a+bXi
-
- Xi=predictor variable (number of times “means” appears)
- a=the Y-intercept (% found infringed where Xi=0)
- b=the rate of change in Y given one unit change in Xi
P(valid)=a+bX 1 +cX 2 +dX 3
-
- X1, X2, X3 are various predictor variables
- a=Y-intercept (% found valid where X1, X2, X3=0)
- b,c,d=rate of change in P(valid) per unit change of X1, X2, X3
SA(m)=CO/(CO+IN)
-
- CO=number of correct predictions for model (m)
- IN=number of incorrect predictions for model (m)
SA(TEST)>SA(m−1)
TABLE 1 | |||
Asserted Claim | % Infringed | ||
“Means” | 47.1 | ||
“Non-Means” | 51.2 | ||
Y=mX+B
-
- X=X-coordinate value (avg. age cited refs. in years)
- m=slope of line (% infringement/#years)
- b=Y-axis intercept
TABLE 2 | ||
CLASS | DESCRIPTION | MORTALITY |
482 | Exercise Equipment | 79% |
473 | Golf Clubs/Equipment | 74% |
434 | Golf Training Devices | 71% |
446 | Toys and |
70% |
206/250 | Packaging | 57% |
365/364 | |
45% |
935 | Genetic Engineering | 44% |
TABLE 3 | |||
Quality | Rating | ||
Highest quality | AAA | ||
High quality | AA | ||
Medium-high quality | A | ||
Upper medium quality | BBB | ||
Medium quality | BB | ||
Lower medium quality | B | ||
Medium-low quality | CCC | ||
Low quality | CC | ||
Lowest quality | C | ||
TABLE 4 | |||
BDR Rating | Overall Rating | ||
A/A/A | AAA | ||
A/A/x | AA | ||
A/x/A | AA | ||
x/A/A | AA | ||
A/x/x | A | ||
x/A/x | A | ||
x/x/A | A | ||
B/B/B | BBB | ||
B/B/x | BB | ||
B/x/B | BB | ||
x/B/B | BB | ||
B/x/x | B | ||
x/B/x | B | ||
x/x/B | B | ||
C/C/C | CCC | ||
C/C/x | CC | ||
C/x/C | CC | ||
x/C/C | CC | ||
C/x/x | C | ||
x/C/x | C | ||
x/x/C | C | ||
x/x/x | D | ||
Claims (22)
CVm =f{PV1,PV2 . . . PVn}
CVm =f{PV1,PV2 . . . PVn}
CVm =f{PV1,PV2 . . . PVn}
Priority Applications (1)
Application Number | Priority Date | Filing Date | Title |
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US13/092,764 US9177349B2 (en) | 1999-09-14 | 2011-04-22 | Method and system for rating patents and other intangible assets |
Applications Claiming Priority (4)
Application Number | Priority Date | Filing Date | Title |
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US15406699P | 1999-09-14 | 1999-09-14 | |
US09/661,765 US6556992B1 (en) | 1999-09-14 | 2000-09-14 | Method and system for rating patents and other intangible assets |
US10/425,554 US7962511B2 (en) | 1999-09-14 | 2003-04-29 | Method and system for rating patents and other intangible assets |
US13/092,764 US9177349B2 (en) | 1999-09-14 | 2011-04-22 | Method and system for rating patents and other intangible assets |
Related Parent Applications (1)
Application Number | Title | Priority Date | Filing Date |
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US10/425,554 Continuation US7962511B2 (en) | 1999-09-14 | 2003-04-29 | Method and system for rating patents and other intangible assets |
Publications (2)
Publication Number | Publication Date |
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US20110289096A1 US20110289096A1 (en) | 2011-11-24 |
US9177349B2 true US9177349B2 (en) | 2015-11-03 |
Family
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US09/661,765 Expired - Lifetime US6556992B1 (en) | 1999-09-14 | 2000-09-14 | Method and system for rating patents and other intangible assets |
US10/425,554 Expired - Fee Related US7962511B2 (en) | 1999-09-14 | 2003-04-29 | Method and system for rating patents and other intangible assets |
US13/092,764 Expired - Fee Related US9177349B2 (en) | 1999-09-14 | 2011-04-22 | Method and system for rating patents and other intangible assets |
Family Applications Before (2)
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US09/661,765 Expired - Lifetime US6556992B1 (en) | 1999-09-14 | 2000-09-14 | Method and system for rating patents and other intangible assets |
US10/425,554 Expired - Fee Related US7962511B2 (en) | 1999-09-14 | 2003-04-29 | Method and system for rating patents and other intangible assets |
Country Status (1)
Country | Link |
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US (3) | US6556992B1 (en) |
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US20110289096A1 (en) | 2011-11-24 |
US6556992B1 (en) | 2003-04-29 |
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