Ex Parte BentDownload PDFPatent Trial and Appeal BoardOct 11, 201811550583 (P.T.A.B. Oct. 11, 2018) Copy Citation UNITED STA TES p A TENT AND TRADEMARK OFFICE APPLICATION NO. FILING DATE 11/550,583 10/18/2006 46320 7590 Shutts & Bowen LLP STEVEN M. GREENBERG 525 Okeechobee Blvd # 1100 West Palm Beach, FL 33401 10/15/2018 FIRST NAMED INVENTOR Graham Anthony Bent 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 ATTORNEY DOCKET NO. CONFIRMATION NO. GB920050069US1 (430) 8929 EXAMINER RIFKIN, BEN M ART UNIT PAPER NUMBER 2123 NOTIFICATION DATE DELIVERY MODE 10/15/2018 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): docketing@crgolaw.com sgreenberg@shutts.com aschneider@shutts.com PTOL-90A (Rev. 04/07) UNITED STATES PATENT AND TRADEMARK OFFICE BEFORE THE PATENT TRIAL AND APPEAL BOARD Ex parte GRAHAM ANTHONY BENT Appeal2017-007597 Application 11/550,583 1 Technology Center 2100 Before HUBERT C. LORIN, ANTON W. PETTING, and MICHAEL W. KIM, Administrative Patent Judges. LORIN, Administrative Patent Judge. DECISION ON APPEAL STATEMENT OF THE CASE Graham Anthony Bent (Appellant) seeks our review under 35 U.S.C. § 134(a) of the final rejection of claims 1, 9, 15, 21, 24, 26, 28, 31, and 32. We have jurisdiction under 35 U.S.C. § 6(b). SUMMARY OF DECISION We REVERSE. 1 The Appellant identifies International Business Machines Corporation as the real party in interest. App. Br. 2. Appeal2017-007597 Application 11/550,583 THE INVENTION Claim 1, reproduced below, is illustrative of the subject matter on appeal. 1. A computer-implemented method for constructing a classifier classifying data records into specific categories, comprising: a) clustering a set of records that are to be classified into a plurality of clusters of records by applying a clustering process to the set of records that are to be classified; b) creating a first classifier based upon the clustered set of records that are to be classified, the first classifier enabled to classify records into a plurality of training clusters; c) applying the first classifier to a set of training records to create a plurality of training clusters, each record in each training cluster of the plurality of training clusters having a corresponding predicted class; d) creating separate classifiers for each training cluster of the plurality of training clusters; and, e) applying one of the created separate classifiers to a corresponding one of the clusters of records amongst the clustered set of records in order to classify the corresponding one of the clusters of records, wherein the first classifier and also each separate classifier learns one or more sets of relationships that define each of a known set of predicted classes and wherein the computer- implemented method first processes the set of records that are to be classified to determine a context before using the set of training records to classify the set of records based upon the determined context. 2 Appeal2017-007597 Application 11/550,583 THE REJECTION The Examiner relies upon the following as evidence of unpatentability: Vu Goodman US 2002/0078091 Al US 2005/0015454 Al June 20, 2002 Jan.20,2005 Ricardo Gutierrez-Osuna, Intelligent Sensor Systems - Lecture 13: Validation, Wright State University (August 2, 2002). [Gutierrez- Osuna] The following rejection is before us for review: Claims 1, 9, 15, 21, 24, 26, 28, 31, and 32 are rejected under 35 U.S.C. § I03(a) as being unpatentable over Goodman, Vu, and Gutierrez- Osuna. ISSUE Did the Examiner err in rejecting claims 1, 9, 15, 21, 24, 26, 28, 31, and 32 under 35 U.S.C. § I03(a) as being unpatentable over Goodman, Vu, and Gutierrez-Osuna? ANALYSIS With respect to claim 1, the Examiner finds that Goodman discloses all that is claimed but fails to explicitly disclose, "b) creating a first classifier based upon the set of records that are to be classified, the first classifier enabled to classify records into a plurality of training clusters" and "applying the first classifier", "e) applying one of the created separate classifiers to a corresponding one of the clusters of records amongst the clustered set of records in order to classify 3 Appeal2017-007597 Application 11/550,583 the corresponding one of the clusters of records", and "Wherein the computer-implemented method first processes the set of records that are to be classified to determine a context before using the set of training records to classify the set of records based upon the determined context." Final Rej. 3--4. Vu is relied upon for disclosing step "b)" and Gutierrez- Osuna is relied upon for disclosing step "e )". The Examiner makes similar findings with respect to the other independent claims (See Final Rej. 6 and 9 for independent claims 9 and 15, respectively). According to the Examiner, "[a]t the time of invention it would have been obvious to one skilled in the art of clustering to combine the work of Goodman and Vu in order to" • "make use of k nearest neighbor to cluster and to make use of context when classifying" (Final Rej. 4, 8, and 11); and, • "allow the user to test itself on its own training data" (Final Rej. 5, 9, and 12). The Appellant disagrees that Gutierrez-Osuna discloses step "e )". The Examiner relied on page 3 of Gutierrez-Osuna as disclosing the subject matter of claim step "(e)." Final Rej. 4, 8, and 11 ("(Pg.3; EN: this denotes the process of using the training set to estimate the error rate (i.e. classify the training data used to create the classifier).") The Appellant reproduced page 3 of Gutierrez-Osuna and argues that "[a]s can be seen, the portion referred to by Examiner teaches nothing related to the application of a classifier to any set of records so as to classify the records." App. Br. 6. At best, page 3 of Gutierrez-Osuna discloses that, "in real applications," one only has "access to a finite set of examples, usually smaller than [ ] wanted." "One approach is to use the entire training data to 4 Appeal2017-007597 Application 11/550,583 select our classifier and estimate the error rate." "A much better approach is to split the training data into disjoint subsets: the holdout method." But said disclosure does not meet what is claimed, which is "[ e)] applying one of the created separate classifiers to a corresponding one of the clusters of records amongst the clustered set of records in order to classify the corresponding one of the clusters of records." The claims do not simply call for splitting data into subsets, but rather to apply a created separate classifier to a corresponding cluster of records "in order to classify the corresponding one of the clusters of records." The Answer repeats the reliance on page 3 of Gutierrez-Osuna as disclosing the subject matter of claim step "( e )" as repeated in the Answer. Ans. 4. But, as the Appellant argues, "nothing is present in page 3 of Gutierrez-Osuna of the application of a classifier to a corresponding cluster of records in order to classify the corresponding cluster of records." Reply Br. 5. The rejection is not sustained. DECISION The decision of the Examiner to reject claims 1, 9, 15, 21, 24, 26, 28, 31, and 3 2 is reversed. REVERSED 5 Copy with citationCopy as parenthetical citation