Ex Parte Bramlett et alDownload PDFPatent Trial and Appeal BoardJan 27, 201713107176 (P.T.A.B. Jan. 27, 2017) Copy Citation United States Patent and Trademark Office UNITED STATES DEPARTMENT OF COMMERCE United States Patent and Trademark Office Address: COMMISSIONER FOR PATENTS P.O.Box 1450 Alexandria, Virginia 22313-1450 www.uspto.gov APPLICATION NO. FILING DATE FIRST NAMED INVENTOR ATTORNEY DOCKET NO. CONFIRMATION NO. 13/107,176 05/13/2011 William L. Bramlett JR. 2591.028US1 6873 25763 7590 01/31/2017 DORSEY & WHITNEY LLP - MINNEAPOLIS ATTENTION: PATENT PROSECUTION DOCKETING DEPARTMENT INTELLECTUAL PROPERTY PRACTICE GROUP - PT/16TH EL 50 SOUTH SIXTH STREET, SUITE 1500 MINNEAPOLIS, MN 55402-1498 EXAMINER SCHEUNEMANN, RICHARD N ART UNIT PAPER NUMBER 3624 NOTIFICATION DATE DELIVERY MODE 01/31/2017 ELECTRONIC Please find below and/or attached an Office communication concerning this application or proceeding. The time period for reply, if any, is set in the attached communication. Notice of the Office communication was sent electronically on above-indicated "Notification Date" to the following e-mail address(es): ip. docket @ dorsey .com PTOL-90A (Rev. 04/07) UNITED STATES PATENT AND TRADEMARK OFFICE BEFORE THE PATENT TRIAL AND APPEAL BOARD Ex parte WILLIAM L. BRAMLETT JR., BRIAN C. GIEDT, and JOSEPH M. KISTNER Appeal 2015-0027971 Application 13/107,176 Technology Center 3600 Before MURRIEL E. CRAWFORD, JOSEPH A. FISCHETTI, and MICHAEL W. KIM, Administrative Patent Judges. KIM, Administrative Patent Judge. DECISION ON APPEAL STATEMENT OF THE CASE This is an appeal from the final rejection of claims 1—6, 9-24, 27—38, and 40-42. We have jurisdiction to review the case under 35 U.S.C. §§ 134 and 6. The invention relates generally to using a neural network to select employees for a particular job or occupation. Spec. 115. 1 The Appellants identify Profiles International, Inc. as the real party in interest. Appeal Br. 2. Appeal 2015-002797 Application 13/107,176 Independent claim 1 is illustrative: 1. A system comprising: one or more computer processors configured for: receiving data relating to a plurality of persons, the plurality of persons employed in the same occupation, a portion of the plurality of persons comprising top performers in the occupation, and a portion of the plurality of persons comprising bottom performers in the occupation, wherein the data relates to one or more of personal traits and performance traits; inputting the data into a software-based neural network; using the neural network to generate models for the personal traits as a function of the personal traits and the performance traits of the top performers; and using the neural network to generate performance models comprising the personal traits models; wherein the performance models are configured to determine that a particular person, who is not one of the plurality of persons, will likely be a top performer in the occupation, a bottom performer in the occupation, or neither a top performer or a bottom performer; wherein the personal traits models comprise a numeric range; and wherein the performance models comprise at least one personal traits model that includes, among the performance models, two or more different sub-ranges such that the system is less likely to treat the particular person as an outlier candidate. Claims 1—6, 9-24, 27—38, and 40-42 are rejected under 35 U.S.C. § 101 as reciting ineligible subject matter in the form of an abstract idea. Claims 1 and 16 are rejected under 35 U.S.C. 112, first paragraph, as failing to comply with the written description requirement. Claims 1, 2, 9-16, 18—23, and 27—37 are rejected under 35 U.S.C. 103(a) as being unpatentable over Thissen-Roe (US 2006/0282306 Al, pub. Dec. 14, 2006) and Rosner (US 2008/0033792 Al, pub. Feb. 7, 2008). 2 Appeal 2015-002797 Application 13/107,176 Claims 3—5 are rejected under 35 U.S.C. § 103(a) as unpatentable over Thissen-Roe, Rosner, and Rosen (US 7,805,382 B2, iss. Sept. 28, 2010). Claims 17 and 24 are rejected under 35 U.S.C. § 103(a) as unpatentable over Thissen-Roe, Rosner, and Scarborough (US 7,562,059 B2, iss. July 14, 2009). Claim 6 is rejected under 35 U.S.C. § 103(a) as unpatentable over Thissen-Roe, Rosner, Rosen, and Scarborough. Claim 38 is rejected under 35 U.S.C. § 103(a) as unpatentable over Thissen-Roe, Rosner, and Bryce (US 2002/0143573 Al, pub. Oct. 3, 2002). Claim 40 is rejected under 35 U.S.C. § 103(a) as unpatentable over Thissen-Roe, Rosner, and “Prevue Client Service System”, Leader’s Guide (Profiles International, Inc., Waco, Texas), (1995), 6 pgs. (hereinafter “Prevue”). Claims 41 and 42 are rejected under 35 U.S.C. § 103(a) as unpatentable over Thissen-Roe, Rosner, and Levin (US 2003/0101091 Al, pub. May 29, 2003). We AFFIRM. ANALYSIS Rejection of Claims 1—6, 9—24, 27—38, and 40—42 under 35 U.S.C. mi We are persuaded by the Appellants’ argument that the pending claims do not merely recite abstract ideas, because they are instead directed to systems that use machine intelligence to analyze human data. Reply Br. 9. The Examiner finds the subject matter of the claims to be abstract ideas that “require no more than a generic computer to perform generic computer 3 Appeal 2015-002797 Application 13/107,176 functions that are well-understood, routine and conventional activities previously known to the industry.” Answer 5—6. The Examiner provides no evidence or reasoning, however, to support how the claimed use of a “neural network,” a complex artificial intelligence software application (Spec. 1113—14) that is recited in each of the independent claims, is a “generic computer” that performs “generic computer functions.” For this reason, we do not sustain the rejection of claims 1—6, 9—24, 27-38, and 40-42 under 35 U.S.C. § 101. Rejection of Claims 1 and 16 under 35 U.S.C. § 112, First Paragraph, as New Matter We are persuaded by the Appellants’ argument that there is support in the application for multiple sub-ranges that make it less likely to treat a candidate as an outlier, as claimed. Appeal Br. 10-12; see also Reply Br. 1— 3. Specifically, the Examiner finds “multiple sub-ranges are not disclosed, and multiple sub-ranges to reduce the likelihood that a candidate will be treated as an outlier are not disclosed.” Final Act. 5. The Appellants’ Specification states that “FIG. 4 further illustrates how a particular person compares with each of the personal trait models 435, generated by the neural network using the personal trait data of the top and bottom performers.” Spec. 121. Figure 4, shown below, is annotated to point out element 435, which shows a series of traits with associated ranges, as follows: 4 Appeal 2015-002797 Application 13/107,176 The Appellants’ Figure 4 annotated to highlight traits with associated ranges shown in element 435. The Specification provides an example that demonstrates the use of multiple sub-ranges for a single trait model: [NJeural network determined that the data for the top and bottom performers indicate that top bank tellers display an assertiveness ranking of 3-5 and 7-9, and an independence ranking of 1-3 and 6- 9. Consequently, the neural network generated a performance model 400 to identify potential top bank tellers, wherein the assertiveness and independence rankings are 3-5 and 6-9 respectively, and a performance model 450 to identify top bank tellers, wherein the assertiveness and independence rankings are 7- 9 and 1-3 respectively. Spec. 123. As the Appellants point out, this discloses multiple sub-ranges, being 7—9 and 1—3, within a single trait model, as claimed. Appeal Br. 11. We agree with the Appellants that the ordinary artisan would understand from this as follows: If there is a first sub-range and a second sub-range, and a person falls within the second sub-range, the presence of that second 5 Appeal 2015-002797 Application 13/107,176 sub-range makes it less likely that that person will be treated as an outlier (because the second sub-range expands the acceptable scores that are considered as meeting the personality trait for the job position). The presence of the second sub-range also makes it less likely that an outlier will be missed for consideration of a job position. Appeal Br. 12. The existence of multiple sub-ranges means more candidates may fall within one or the other, which may be more inclusive than having only one range. We are persuaded that the ordinary artisan would, thus, have recognized from the Appellants’ original Specification that the Appellants had possession of “two or more different sub-ranges such that the system is less likely to treat the particular person as an outlier candidate,” as claimed. For these reasons, we do not sustain the rejection of claims 1 and 16 under 35U.S.C. § 112, first paragraph. Rejection of Claims 1, 2, 9—15, and 34—37 under 35 U.S.C. f 103(a) The Appellants argue independent claims 1, and 34—37 together as a group. Appeal Br. 19. We select claim 1 as representative. See 37 C.F.R. § 41.37(c)(l)(iv). We are unpersuaded by the Appellants’ argument that Thissen-Roe does not disclose two or more sub-ranges within a personal traits model, using a neural network. Appeal Br. 13—16; see also Reply Br. 5—6. Thissen-Roe discloses “a trait predictor can predict any of a variety of personality traits such as assertiveness, conscientiousness, diligence, integrity, responsibility, honesty, reliability, ambition, resilience, compliance, and the like.” Thissen-Roe, para. 88. Thissen-Roe also discloses “[i]n any of the examples herein, a predictive model can be a 6 Appeal 2015-002797 Application 13/107,176 neural network, expert system, or other artificial intelligence model.” Id. at 1117. We are persuaded that the ordinary artisan would, thus, have recognized that Thissen-Roe discloses “using the neural network to generate models for the personal traits as a function of the personal traits and the performance traits of the top performers,” as claimed. In addition, Thissen-Roe discloses the output of its trait predictor can be multiple ranges, in that its “trait predictor can apply pre-processing to its inputs to provide the output (e.g., to a predictive model), which can take the form of an estimate of where within a bell curve the candidate lies (e.g., a distribution from -3 to 3, with a standard deviation of 1).” Thissen-Roe, para. 90. Here, the ordinary artisan would have recognized the distribution of a range of -3 to 3 includes a sub-range from -3 to zero, and a second sub range from zero to 3, meeting the claim language of “at least one personal traits model that includes, among the performance models, two or more different sub-ranges.” Insofar as the Appellants may be asserting that the two sub-ranges must be explicitly identified in the prior art and/or cannot be overlapping in any respect, such limitations are not recited in the claim. We are not persuaded by the Appellants’ argument that Thissen-Roe fails to disclose “any system or means that is less likely to treat a candidate as an outlier,” specifically in paragraphs 176—77. Appeal Br. 14—15; see also Reply Br. 4. The Specification describes that “the neural network generates a plurality of performance models. These performance models include one or more different models for the models that make up the performance models. The plurality of performance models makes it less likely that an outlier candidate will be missed.” Spec. 123. The Specification, thus, discloses 7 Appeal 2015-002797 Application 13/107,176 that the method by which “the system is less likely to treat the particular person as an outlier candidate,” is to include multiple, different models. The Specification does not explain how multiple sub-ranges leads to it being less likely to treat a candidate as an outlier. Reading claim 1 broadly, in light of the Specification {Id.), we construe the language to mean that having sub ranges that cover more traits makes them more inclusive, and, thus, helps to avoid candidates being treated as outliers by having more candidates included with more, or wider, ranges of acceptable traits. In addition, because Thissen-Roe discloses the use of multiple, different trait models (see Thissen-Roe, para. 88), Thissen-Roe is also “less likely to treat the particular person as an outlier candidate.” Similarly, multiple, wide sub-ranges would tend to be inclusive by including more traits in the acceptable range, so Thissen-Roe’s six-point-wide zone covered by its inclusive range would be more inclusive, we assume, than a two-point-wide zone, or two one-point wide zones, such as from -1 to zero and zero to 1. The Appellants refer to the Declaration of William Bramlett as evidence of patentability, especially as to the purpose of Thissen-Roe, and the lack of neural networks at use in the industry. Appeal Br. 16—18. The Declaration asserts that “the contribution of the Thissen-Roe system seems to be the use of a neural network to implement an adaptive assessment system.” Deck, para. 4. It is not necessary for the prior art to serve the same purpose as that disclosed in the Appellants’ Specification in order to support the conclusion that the claimed subject matter would have been obvious. See In reLinter, 458 F.2d 1013, 1016. Although Thissen- Roe does discuss adaptive questioning techniques (see Thissen-Roe 13), the adaptive questioning is in addition to other disclosures, such as the use of a 8 Appeal 2015-002797 Application 13/107,176 model that predicts traits as inputs to a model that makes candidate predictions (Thissen-Roe 1 85) (“a predictive model 1410 includes a trait predictor 1420 that accepts some of the inputs directed to the predictive model 1410 and generates a trait predictor output 1482, which is fed to the prediction engine (e.g., a neural network) 1430, which then generates the output OUT.”). The Declaration also repeats the argument that “Thissen-Roe does not seem to disclose using a neural network to generate personal trait models, and then using the neural network to generate a performance model from those personal trait models.” Decl., para. 5. We find this unpersuasive, because Thissen-Roe discloses the use of a neural network (| 117) to create traits models (1 88) that are fed into a predictive model (190), thus, meeting the claim language. We are also unpersuaded by the Declaration’s assertion that its author is “unaware” of any competitors “using a neural network” for the claimed steps. Deck, para. 6. Although this may be true, we have no evidence in the record other than the assertion to use in evaluating the statement. Ultimately, this is unimportant, however, because the rejection of claim 1 is based instead on the disclosures of Thissen-Roe and Rosner, rather than on what methods were in use in commerce by the Appellants’ competitors. For these reasons, we sustain the rejection of independent claims 1 and 34—37, as well as dependent claims 2 and 9-15 that were not separately argued. 9 Appeal 2015-002797 Application 13/107,176 Rejection of Claims 16, 18—23, and 27—33 under 35 U.S.C. f 103(a) The Appellants generally assert the language of claim 16 has specific benefits, but do not provide any further analysis. Appeal Br. 18—19. A general allegation that the art does not teach any of the claim limitations is no more than merely pointing out the claim limitations. A statement which merely points out what a claim recites will not be considered an argument for separate patentability of the claim. 37 C.F.R. § 41.37(c)(l)(vii). The Appellants also generally assert that Thissen-Roe does not disclose claim language similar to that recited in independent claim 1. Appeal Br. 18—19. Our analysis is the same as set forth above for independent claim 1, and need not be repeated here. For this reason, we sustain the rejection of independent claim 16 and claims 18—23 and 27—33 that depend from claim 16, and which are not separately argued. Rejection of Claim 17 under 35 U.S.C. § 103(a) We are not persuaded by the Appellants’ argument that Scarborough teaches away from “wherein the set of questions is developed by an industrial psychologist independently of the generation of the models and the performance model,” because Scarborough discloses disadvantages of using psychologist-provided questions, apparently citing to column 2, lines 1—10 of Scarborough. Appeal Br. 19. Scarborough continues that “a study can be conducted to verify whether the factors chosen by the psychologist have been successful in identifying suitable applicants,” but that such studies are expensive. Scarborough col. 2,11. 11—18. We are unpersuaded that “expense” here is a 10 Appeal 2015-002797 Application 13/107,176 disadvantage sufficient to constitute a teaching away. Indeed, instead, we discern that it actually discloses that the aforementioned claim limitation is known, albeit expensive. Moreover, amongst various embodiment examples, Scarborough discloses, without reservation: “[w]hen selecting new questions, it may be advantageous to employ the services of an industrial psychologist who can evaluate the job and determine appropriate job skills. The psychologist can then determine an appropriate question to be asked to identify a person who will fit the job.” Id. at col. 10,11. 38-42. “A reference may be said to teach away when a person of ordinary skill, upon reading the reference, would be discouraged from following the path set out in the reference, or would be led in a direction divergent from the path that was taken by the applicant.” In re Kahn, 441 F.3d 977, 990 (Fed. Cir. 2006) (citations and internal quotation marks omitted). Scarborough, thus, discloses concerns with using psychologists as a source of questions, but provides methods to overcome those cautions, and relies on psychologists in some examples without reservation. For this reason, we sustain the rejection of claim 17. Rejections of Claims 3—6, 24, 38, and 40—42 under 35 U.S.C. § 103(a) The rejections of these dependent claims were not argued separately with any specificity. We therefore sustain the rejections of claims 3—6, 24, 38, and 40-42. 11 Appeal 2015-002797 Application 13/107,176 DECISION We REVERSE the rejection of claims 1—6, 9—24, 27—38, and 40-42 under 35 U.S.C. § 101. We REVERSE rejection of claims 1 and 16 under 35 U.S.C. § 112, first paragraph. We AFFIRM the rejections of claims 1—6, 9—24, 27—38, and 40-42 under 35 U.S.C. § 103(a). No time period for taking any subsequent action in connection with this appeal may be extended under 37 C.F.R. § 1.136(a)(l)(iv). AFFIRMED 12 Copy with citationCopy as parenthetical citation