Data processing: database and file management or data structures – Database design – Data structure types
Reexamination Certificate
2006-03-21
2009-11-03
Woo, Isaac M (Department: 2166)
Data processing: database and file management or data structures
Database design
Data structure types
C707S793000, C715S254000
Reexamination Certificate
active
07613690
ABSTRACT:
A list of “hot topics” may be provided to a user to indicate information that is currently popular. A topic may be deemed popular when a large number of search queries related to the topic are entered by users. A search system may receive and analyze an electronic source of published information to determine a reason for why a particular popular topic is popular. If content related to why a particular popular topic is popular exists in multiple electronic sources of published information, text summarization techniques may be used to determine a reason for why the popular topic is popular by from among the multiple electronic sources of published information.
REFERENCES:
patent: 6859807 (2005-02-01), Knight et al.
patent: 7146416 (2006-12-01), Yoo et al.
patent: 2003/0005035 (2003-01-01), Rodgers
patent: 2003/0033333 (2003-02-01), Nishino et al.
patent: 2003/0208485 (2003-11-01), Castellanos
patent: 2005/0033657 (2005-02-01), Herrington et al.
patent: 2006/0101003 (2006-05-01), Carson et al.
patent: 2006/0230021 (2006-10-01), Diab et al.
patent: 2007/0083894 (2007-04-01), Gonsalves et al.
Yahoo Buzz Index, Jan. 27, 2004, http://web.archive.org/web/20040127191005/http://buzz.yahoo.com/.
M. Amini, “Interactive Learning for Text Summarization”, Proceedings of the PKDD 2000 Workshop on Machine Learning and Textual Information Access, pp. 44-52, 2000.
C. Aone, J. Gorlinsky, B. Larsen, and M. Okurowski, “Trainable Sumarizer with Knowledge Acquired from Robust NLP Techniques”, Advances in Automatic Text Summarization, MIT Press, Cambridge, MA, pp. 71-80, 1997.
R. Barzillay and M. Elhadad, “Using Lexical Chains for Text Summarization”, In Proceedings of the Intelligent Scalable Text Summarization Workshop (ISTS '97), ACL, Madrid, Spain, pp. 10-17, 1997.
S. M. Beitzel, E. Jensin, O. Freider, D.Lewis, A. Chowdhury and A. Kolcz. “Improving Automatic Query Classification via Semi-supervised Learning”, Fifth IEEE International Conference on Data Mining (ICDM '05), 8 pages, 2005.
S. M. Beitzel, E. Jensin, A. Chowdhury and O. Freider, “Hourly Analysis of a Very Large Topically Categorized Web Query Log”, Special Interest Group on Information Retrieval (SIGIR '04), Sheffield, South Yorkshire, UK, pp. 321-328, 2004.
T. Briscoe and J. Carroll, “Robust Accurate Statistical Annotation of General Text”, Proceedings of the Third International Conference on Language Resources and Evaluation (LREC 2002), 6 pages, 2002.
J. Carbonell and J. Goldstein, “The Use of MMR, Diversity-Based Reranking for Reordering Documents and Producing Summaries”, Proceedings of the 21st Annual International ACM SIGIR Conference (SIGIR '98), Melbourne, Australia, pp. 335-336, 1998.
S. Chien and N. Immorlica, “Semantic Similarity Between Search Engine Queries Using Temporal Correlation”, World Wide Web Conference, Chiba, Japan, pp. 2-11, 2005.
W. Chuang and J. Yang, “Extracting Sentence Segments for Text Summarization: A Machine Learning Approach”, Special Interest Group on Information Retrieval (SIGIR '00), pp. 152-159, 2000.
H. P. Edmundson, “New Methods in Automatic Extracting” Journal of the Association for Computing Machinery, vol. 16, No. 2, Apr. 1969, pp. 264-285.
E. Filatova and V. Hatzivassiloglou, “Event-Based Extractive Summarization”,ACL Workshop on Summarization, Barcelona, Spain, 8 pages, 2004.
J. Goldstein, M. Kantrowitz, V. Mittal and J. Carbonell, Summarizing Text Documents: Sentence Selection and Evaluation Metrics, Special Interest Group on Information Retrieval (SIGIR '99), Berkley, CA, pp. 121-128, 1999.
D. Grossman and P. Frieder, “Information Retrieval Algorithm and Heuristics”, Second Edition, Springer, Netherlands, 2004.
U. Hahn and U. Reimer, “Knowledge-Based Text Summarization: Salience and Generalization Operators for Knowledge Base Abstraction”, Advances in Automatic Text Summarization, MIT Press, pp. 215-232, 1997.
K. Knight and D. Marcu, “Statistics-Based Summarization—Step One: Sentence Compression”, American Association for Artificial Intelligence, 10 pages, 2000.
K. Knight and D. Marcu, “Summarization beyond sentence extraction: A probabilistic approach to sentence compression”, Artificial Intelligence, pp. 91-107, 2001.
H.P. Luhn, “The Automatic Creation of Literature Abstracts”, pp. 159-165, IBM Journal Apr. 1958.
D. Marcu, “From local to global coherence: A bottom-up approach to text planning”, American Association for Artificial Intelligence, pp. 627-635, 1997.
K. McKeown, R. Barzilay, J. Chen, D. Elson, D Evans, J. Klavans, A Nenkova, B. Schiffman and S. Sigelman, “Columbia's Newblaster: New Features and Future Directions”, Proceedings of HLT-NAACL Demonstrations, pp. 15-16, 2003.
M. Mitra, A. Singhal and C. Buckley, “Automatic Text Summarization by Paragraph Extraction”, Proceedings of the ACL '97/EACL '97 Workshop on Intelligent Scalable Text Summarization, Madrid, Spain, pp. 1-11, 1997.
D. Radev, S. Blair-Goldensohn and S. Zhang, “Experiments in Single and Multi-Document Summarization Using MEAD”, Proc. Document Understanding Conference, 8 pages, 2001.
D. Radev, S. Blair-Goldensohn, S. Zhang and R. Raghavan, “NewsInEssence: A System for Domain-Independent, Real-Time News Clustering and Multi-Document Summarization”, Proceedings of the First International Conference on Human Language Technology Research (HLT '01), Association for Computational Linguistics, Morsistown, NJ, 4 pages, 2001.
S.E. Robertson, S. Walker and M. Beaulieu, “Experimentation as a way of life: Okapi at TREC”, Information Processing and Management, 15 pages, 1999.
T. Strzalkowski, J. Wang and B. Wise, “A Robust Practical Text Summarization”, Proceedings of the AAAI Intelligent Text Summarization Workshop, Stanford, CA, pp. 25-33, 1998.
L. Vanderwende, M. Banko and A. Menezes, “Event-Centric Summary Generation”, Proceedings of Document Understanding Conference at HLT-NAACL, Boston, MA, 6 pages, 2004.
D. R. Radev and Weiguo Fan. Automatic Summarization Of Search Engine Hit Lists, , Hong Kong, 11 pages, Oct. 2000.
S. Outing, Poynteronline, Search Engine Rankings Point the Way, 5 pages, Nov. 23, 2005, cited at http://www.poynter.org/dg.lts/id.3785/content.content—view.htm.
Google Zeitgeist, Search patterns, trends, and surprises according to Google, 2 pages, Nov. 23, 2005, cited at http://www.google.com/press/zeitgeist.html.
Ask Jeeves Unleashes More Smart Answers, Aug. 22, 2005, 5 pages, Jan. 23, 2005, cited at http//www.blog.searchenginewatch.com/blog/0508.
A. Spink and B. J. Jansen, A Study of Web Search Trends, Webology, vol. 1, No. 2, 9 pages, Dec. 2004, Nov. 23, 2005, cited at http//www.webology.ir/2004/vln2/a4.html.
Rand Corporation, Hot Topics Selected Resources, Commentary, and Congressional Testimony, 2 pages, Nov. 23, 2005, cited at http//www.rad.org/hot—topics.
Variety.com, Get New and Reviews Delivered for Free, 3 pages, Nov. 23, 2005, cited at http://www.variety.com/index.asp?layout=rss.
Yahoo News, Ratings Box: What's Hot/What's Not, 2 pages, Nov. 23, 2005, cited at http://www.news.yahoo.com/s/mediaweek/20051119/ad—bpimw/ratingsboxwhatshotwhatsnot.
MSN Hot List, 2 pages, Nov. 23, 2005, cited at http://www.hotlist.msn.com.
Yahoo Buzz Index, Jan. 27, 2004, 2 pages, http;//web.archive.org/web/20040127191005/http://buzz.yahoo.com/.
Chowdhury Abdur R.
Pass Gregory S.
Sidhu Kush
Walker Travis
AOL LLC
Fish & Richardson P.C.
Lin Shew-Fen
Woo Isaac M
LandOfFree
Real time query trends with multi-document summarization does not yet have a rating. At this time, there are no reviews or comments for this patent.
If you have personal experience with Real time query trends with multi-document summarization, we encourage you to share that experience with our LandOfFree.com community. Your opinion is very important and Real time query trends with multi-document summarization will most certainly appreciate the feedback.
Profile ID: LFUS-PAI-O-4104257