Data processing: database and file management or data structures – Database design – Data structure types
Reexamination Certificate
2006-02-08
2009-08-25
Cottingham, John R. (Department: 2167)
Data processing: database and file management or data structures
Database design
Data structure types
C707S793000, C709S224000, C715S205000
Reexamination Certificate
active
07580930
ABSTRACT:
The invention comprises a set of complementary techniques that dramatically improve enterprise search and navigation results. The core of the invention is an expertise or knowledge index, called UseRank that tracks the behavior of website visitors. The expertise-index is designed to focus on the four key discoveries of enterprise attributes: Subject Authority, Work Patterns, Content Freshness, and Group Know-how. The invention produces useful, timely, cross-application, expertise-based search and navigation results. In contrast, traditional Information Retrieval technologies such as inverted index, NLP, or taxonomy tackle the same problem with an opposite set of attributes than what the enterprise needs: Content Population, Word Patterns, Content Existence, and Statistical Trends. Overall, the invention emcompasses Baynote Search—a enhancement over existing IR searches, Baynote Guide—a set of community-driven navigations, and Baynote Insights—aggregated views of visitor interests and trends and content gaps.
REFERENCES:
patent: 5867799 (1999-02-01), Lang et al.
patent: 5890149 (1999-03-01), Schmonsees
patent: 5924105 (1999-07-01), Punch, III et al.
patent: 5983214 (1999-11-01), Lang et al.
patent: 6016475 (2000-01-01), Miller et al.
patent: 6041311 (2000-03-01), Chislenko et al.
patent: 6049777 (2000-04-01), Sheena et al.
patent: 6070133 (2000-05-01), Brewster et al.
patent: 6112186 (2000-08-01), Bergh et al.
patent: 6334124 (2001-12-01), Bouchard et al.
patent: 6438579 (2002-08-01), Hosken
patent: 6493703 (2002-12-01), Knight et al.
patent: 6687696 (2004-02-01), Hofmann et al.
patent: 6839680 (2005-01-01), Liu et al.
patent: 6842877 (2005-01-01), Robarts et al.
patent: 6938035 (2005-08-01), Driesch et al.
patent: 7092936 (2006-08-01), Alonso et al.
patent: 7093012 (2006-08-01), Olstad et al.
patent: 7203909 (2007-04-01), Horvitz et al.
patent: 2002/0078091 (2002-06-01), Vu et al.
patent: 2002/0082901 (2002-06-01), Dunning et al.
patent: 2002/0116421 (2002-08-01), Fox et al.
patent: 2002/0199009 (2002-12-01), Willner et al.
patent: 2003/0004996 (2003-01-01), Novaes
patent: 2003/0005053 (2003-01-01), Novaes
patent: 2004/0039630 (2004-02-01), Begole et al.
patent: 2004/0088276 (2004-05-01), Elder et al.
patent: 2004/0088312 (2004-05-01), Elder et al.
patent: 2004/0088315 (2004-05-01), Elder et al.
patent: 2004/0088322 (2004-05-01), Elder et al.
patent: 2004/0088323 (2004-05-01), Elder et al.
patent: 2004/0088325 (2004-05-01), Elder et al.
patent: 2004/0117222 (2004-06-01), Rokosz et al.
patent: 2004/0230572 (2004-11-01), Omoigui
patent: 2004/0263639 (2004-12-01), Sadovsky et al.
patent: 2005/0060312 (2005-03-01), Curtiss et al.
patent: 2005/0108630 (2005-05-01), Wasson et al.
patent: 2005/0165805 (2005-07-01), Novaes
patent: 2006/0259344 (2006-11-01), Patel et al.
patent: 2007/0043609 (2007-02-01), Imam et al.
patent: WO 01/93076 (2001-12-01), None
patent: WO 02/08950 (2002-01-01), None
patent: WO 2004/075466 (2004-09-01), None
patent: WO 2005/029368 (2005-03-01), None
patent: WO 2005/052727 (2005-06-01), None
patent: WO 2006/071931 (2006-07-01), None
Almeida. “A Community Aware Search Engine,” ACM, May 2004, pp. 413-421.
Almeida, R.B. et al.; A Community-Aware Search Engine; Department of Computer Science, Universidade Federal de Minas Gerais, Belo Horizonte, MG, Brazil; 2004.
Boyan, J. et al.; A Machine Learning Architecture for Optimizing Web Search Engines; AAAI Workshop on Internet-Based Information Systems, Portland, Oregon, 1996.
Joachims, T. et al.; WebWatcher: A Tour Guide for the World Wide Web; School of Computer Science, Carnegie Mellon University, Pittsburg, PA; Sep. 1996.
Ian Ruthven et al.; Selective Relevance Feedback Using Term Characteristics; Department of Computing Science, University of Glasgow, Scotland; 1999.
Vogt, C.C. et al.; Using Relevance to Train a Linear Mixture of Experts; Computer Science and Engineering 0114, University of California, San Diego; 1997.
Pohle, C. et al.; Building and Exploiting Ad-Hoc Concept Hierarchies for Web Log Analysis; Data Warehousing and Knowledge Discovery. 4th International Conference, DaWak 2002. Proceedings (Lecture Notes in Computer Science vol. 2454) p. 83-93; Springer-Verlag, Berlin, Germany; 2002.
Hammer, M. et al.; Acquisition and Utilization of Access Patterns in Relational Data Base Implementaion; 1976 Joint Workshop on Pattern Recognition and Artificial Intelligence p. 14; IEEE, New York, NY, USA; 1976.
Drogan, M. et al.; Extracting Riches from the Web: Web Mining/Personalization; SCI 2003. 7th World Multiconference on Systemics, Cybernetics and Informatics Proceedings vol. 16 p. 214-19; IIIS; Orlando, FL, USA; 2003.
Dean, J. et al.; Finding Related Pages in the World-Wide Web; Computer Networks vol. 31, No. 11-16 p. 1467-79; Elsevier; May 17, 1999; Netherlands.
Weideman, M. et al.; The Effect of Search Engine Keyword Choice and Demographic Features on Internet Searching Success; Information Technology and Libraries, 23, 2, 58(8); Jun. 2004.
Graham, P., et al. A Mechanism for the Dynamic Construction of Clusters Using Active Networks. Proceedings International conference on Parallel Processing Workshops. IEEE Comput. Soc. Los Alamitos, CA. 2001.
Zhao, D.G. Usage Statistics Collection and Management in the ELINOR Electronic Library. Journal of Information Science. vol. 21. No. 1 p. 1-9. 1995 U.K.
Osman, I.M. Matching Storage Organization to Usage Pattern in Relational Data Bases. Univ. Durham, U.K. 1974.
Iamnitchi, A.I. Resource Discovery in Large Resource-Sharing Environments. The University of Chicago. 2003. vol. 6410B of Dissertations Abstracts International. p. 5035.
Arpaci-Dusseau, A.C. Implicit Coscheduling Coordinated Scheduing with Implicity Information in Distributed Systems. ACM Transactions on Computer Systems, 19, 3, 283. Aug. 2001.
Asakawa, K., et al. Neural Networks in Japan. (Artifical Intelligence)(Cover Story)(Technical). Communicatons of the ACM, v37. n3. p106(7). Mar. 1994.
De Meo, P., et al. An XML-Based Adaptive Multi-Agent System for Handling E-Commerce Activities. M. Jeckle and L.-J Zhang. ICWS-Europe 2003. LNCS 2853. p. 152-166.
Chan, P.K. A Non-Invasive LEarning Approach to Building Web User Profiles. KDD-00 Workshop on Web Usage Analysis and User Profiling. 1999.
Ruthven, I. Incorporating Aspects of Information Use into Relevance Feedback. Journal of Information Retrieval. 2, 1-5. Kluwer Academic Publishers, Boston. 1992.
Ferguson, I.A. et al.; Multiagent Learning and Adaptation in an Information Filtering Market; Interactive Information Group, Institute for Information Technology, National Research Council; Ottawa ON, Canada; 1996.
Ianni, G.; Intelligent Anticipated Exploration of Web Sites; INFSYS Research Report 1843-01-09; Oct. 9, 2001; Austria.
Jameson, A.; User-Adaptive and Other Smart Adaptive Systems: Possible Synergies; Proceedings of the First EUNITE Symposium, Tenerife, Dec. 13-14, 2001.
Freeberg, Davis, “Will Lycos Settle Claims Against Tivo, Blockbuster & Netflix Out of Court?” Aug. 16, 2007, http://media.seekingalpha.com/article/44627.
Bradshaw Robert
Brave Scott
Jia Jack
Minson Christopher
Baynote, Inc.
Bromell Alexandria Y
Cottingham John R.
Orrick Herrington & Sutcliffe LLP
LandOfFree
Method and apparatus for predicting destinations in a... does not yet have a rating. At this time, there are no reviews or comments for this patent.
If you have personal experience with Method and apparatus for predicting destinations in a..., we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Method and apparatus for predicting destinations in a... will most certainly appreciate the feedback.
Profile ID: LFUS-PAI-O-4084069