Data processing: financial – business practice – management – or co – Automated electrical financial or business practice or... – Electronic shopping
Reexamination Certificate
2005-03-22
2005-03-22
Smith, Jeffrey A. (Department: 3625)
Data processing: financial, business practice, management, or co
Automated electrical financial or business practice or...
Electronic shopping
C705S001100, C705S014270, C706S011000, C706S020000, C706S052000, C706S012000, C706S045000, C706S016000, C707S793000, C707S793000, C707S793000, C707S793000, C707S793000, C709S217000, C345S215000, C379S100150
Reexamination Certificate
active
06871186
ABSTRACT:
A system and method for generating and validating a user profile (25) for a user based on a static profile (10) and a dynamic profile (15) of the user. The method and system compresses the dynamic rules (15) into aggregated rules so that the user can view a comparatively small number of the aggregated rules and select the desired rules from the aggregated rules based on user-desired criteria. The method and system validates user rules (60) using a processing device, which are retrieved from a storage device. The user rules are seperated into at least one subset of a user set. Then, it is determined if a particular rule of the at least one subset is one of acceptable, unacceptable and undecided based on a defined criteria (415). If the particular rules of the at least one subset are acceptable, the particular rules of the at least one subset are provided (e.g. assigned) to a corresponding user (435).
REFERENCES:
patent: 4775935 (1988-10-01), Yourick
patent: 5446891 (1995-08-01), Kaplan et al.
patent: 5487130 (1996-01-01), Ichimori et al.
patent: 5625754 (1997-04-01), Jungst et al.
patent: 5649114 (1997-07-01), Deaton et al.
patent: 5692107 (1997-11-01), Simoudis et al.
patent: 5710884 (1998-01-01), Dedrick
patent: 5724573 (1998-03-01), Agrawal et al.
patent: 5727129 (1998-03-01), Barrett et al.
patent: 5727199 (1998-03-01), Chen et al.
patent: 5749081 (1998-05-01), Whiteis
patent: 5784539 (1998-07-01), Lenz
patent: 5790645 (1998-08-01), Fawcett et al.
patent: 5848396 (1998-12-01), Gerace
patent: 5867799 (1999-02-01), Lang et al.
patent: 5930764 (1999-07-01), Melchione et al.
patent: 5943667 (1999-08-01), Aggarwal et al.
patent: 5970482 (1999-10-01), Pham et al.
patent: 6003020 (1999-12-01), Hazlehurst et al.
patent: 6012051 (2000-01-01), Sammon et al.
patent: 6014638 (2000-01-01), Burge et al.
patent: 6020883 (2000-02-01), Herz et al.
patent: 6041311 (2000-03-01), Chislenko et al.
patent: 6049777 (2000-04-01), Sheena et al.
patent: 6078928 (2000-06-01), Schnase et al.
patent: 6092049 (2000-07-01), Chislenko et al.
patent: 6112186 (2000-08-01), Bergh et al.
patent: 6134532 (2000-10-01), Lazarus et al.
patent: 6356879 (2002-03-01), Aggarwal et al.
patent: 20030014377 (2003-01-01), Barson et al.
patent: 0 661 654 (1995-07-01), None
patent: WO 9715023 (1997-04-01), None
patent: WO 9802835 (1998-01-01), None
Imielinski et al. ; “A Database Perspective on Knowledge Discovery”, Communications of the ACM, Nov. 1996/vol. 39, No. 11, pp. 58-64, extracted from Internet on Proquest database; http://proquest.umi.com on Feb. 12, 2003.*
Fayyad et al.; The KDD Process for Extracting Useful Knowledge from Volumes of Data,Communications of the ACM, Nov. 1996/vol. 39, No. 11, pp. 58-64, extracted from Internet on Proquest database; http://proquest.umi.com on Feb. 12, 2003.*
Wu et al.; “SpeedTracer : A Web usgae mining and analysis tool ”; IBM Systems Jouranl, vol. 37, No. 1, 1998 , pp. 89-105 extracted from Internet on Proquest database; http://proquest.umi.com on Feb. 12, 2003.*
Case study, “Reading Your Mind”; Marketing, Feb. 22, 1996, pp. 33-34, extracted from Internet on Proquest database; http://proquest.umi.com on Feb. 12, 2003.*
Szladow, Adam et al., “Rough sets: working with imperfect data”; Al Expert, v8, n7, p36 (6); Jul. 1993, extracted from Dialog database on Internet on Aug. 14, 2003.*
“Creating a New Medium for Marketing and Selling”, BroadVision, May 10, 1997.
“Firefly Ships Internet's First Solaris Solution for Managing Personalized Relationsuips with Users Online while Protecting their Privacy”, Firefly Press Release, Oct. 14, 1997.
Engage Technologies, a Subsidiary of DMG Information Services, Inc., Launches a Suite of Advanced Enabling Technologies for Accelerated, One-to_one Web Marketing, Engage Technologies, Inc., Press Release 1997.
C. Shum et al., “Implicit Representation for Extensional Answers”, Expert Database Systems, Benjamin/Cummings Publishing Co., Inc., International Conference on Expert Database Systems, 1988, pp. 497-521.
H. Zimmermann, “Fuzzy Set Theory—and Its Applications”, Kluwer-Nijhoff Publishing, pp. 11-22.
J. Quinlan, “C4.5: Programs for Machine Learning”, Morgan Kaufmann Publishers, pp. 1-54.
L. Breiman et al., “Classification and Regression Trees”, Wadsworth International Group, pp. 18-27.
A. Jhingran, “Data Mining and E-Commerce”, IBM TJ Watson Research Center, Oct. 1997.
T. Fawcett et al., “Combining Data Mining and Machine Learning for Effective User Profiling”, NYNEX Science and Technology.
“Engage Suite of Products”, Engage Technologies.
M. Tucker, “Dough”. Datamation, May 1997, pp. 51-58.
R. Cooley et al., “Grouping Web Page Reference into Transactions for Mining World Wide Web Browsing Patterns”, Knowledge and Data Engineering Exchange Workshop, 1997, Proceedings, pp. 2-9.
Jesus Cerquides et al., “Fuzzy Metaqueries for Guiding the Discovery Process in KDD”, Fuzzy Systems, 1997, vol. 3, Proceedings of the Sixth IEEE International Conference, pp. 1555-1559.
A.I. Kokkinaki, “On Atypical Database Transactions: Identification of Probable Frauds Using Machine Learning For User Profiling”, Knowledge and Data Engineering Workshop, 1997, Proceedings, pp. 107-113.
Mike Hogan, Sattellites, Radio, and Super Wireless for New High-Speed Net Access:, PC World, Oct. 1997, p. 68-72.
Ch. Dujet et al., About Modus Ponens and Aggregation of Rules:, Fuzzy Systems, Mar. 1995, p. 1825-1832.
Rakesh Aggrawal et al., “Database Mining A Performance Perspective”, IEEE Transactions on Knowledge and Data Engineering, Dec. 1993, p. 914-925.
Eutani Kim et al., “A New Approach to Fuzzy Modeling”, IEEE Transactions on Fuzzy Systems, Aug. 1997, p. 3428-337.
C.B. Kappert et al., “Neural Nerworks and Business Modelling-An Application of Neural Modelling Techniques to Prospect Profiling in the Telecommunications Industry”, System Sciences, Jan. 1997, p. 465-473.
Mika Klemettinen et al., “Finding Interesting Rules from Large Sets of Discovered Association Rules”, ACM, Nov. 1994, p. 401-407.
R.R. Yager, “Fuzzy Summaries in Database Mining”, Artificial Intelligence for Applications, Feb. 1995, p. 265-269.
T. Fawcett et al., “Adaptive Fraud Detection”, Data Mining and Knowledge Discovery, vol. 1, No. 3, Nov. 1987, pp. 291-316.
B. Lent et al., Clustering Association Rules:, Proc. of 13th International Conference on Data Engineering, Apr. 1997, U.K., pp. 1-19.
M. Pazzani et al., “Syskill & Webert: Identifying Interesting wen sites”, Proceedings of the National Conference on Artificial Intelligence, 1996.
M. Pazzani et al., “Learning and Revising User Profiles: The Identification of Interesting Web Sites”, Machine Learning, 27, 1997, pp. 313-331.
Bruce Krulwich, “Lifestyle Finder: Intelligent User Profiling Using Large-Scale Demographic Data”, Al Magazine, Summer 1997, p. 37-45.
Adomavicius Gediminas
Tuzhilin Alexander S.
Dorsey & Whitney LLP
Garg Yogesh C
New York University
Smith Jeffrey A.
LandOfFree
System and method for dynamic profiling of users in... does not yet have a rating. At this time, there are no reviews or comments for this patent.
If you have personal experience with System and method for dynamic profiling of users in..., we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and System and method for dynamic profiling of users in... will most certainly appreciate the feedback.
Profile ID: LFUS-PAI-O-3444370