Data processing: artificial intelligence – Knowledge processing system – Knowledge representation and reasoning technique
Reexamination Certificate
2011-08-09
2011-08-09
Gaffin, Jeffrey A (Department: 2129)
Data processing: artificial intelligence
Knowledge processing system
Knowledge representation and reasoning technique
C706S062000
Reexamination Certificate
active
07996349
ABSTRACT:
This disclosure describes systems and methods for identifying and correcting anomalies in web graphs. A web graph is transformed into a sequence of tokens via a walk algorithm. The sequence is fingerprinted to form a set of shingles. The singles are compared to shingles for other web graphs in order to determine similarity between web graphs. Actions are then carried out to remove anomalous web graphs and modify parameters governing web mapping in order to decrease the likelihood of future anomalous web graphs being built.
REFERENCES:
Blondel et al., V., “A Measure of Similarity between Graph Vertices: Applications to Synonym Extraction and Web Search”, SIAM Review, vol. 46, No. 4 pp. 647-666, 2004.
Henzinger, M., “Combinatorial Algorithms for Web Search Engines—Three Success Stories”, SIAM 07,pp. 1022-1026, Jan. 2007.
Fetterly et al., D., “Detecting Phrase-Level Duplication on the World Wide Web”, SIGIR '05, pp. 170-177, Aug. 15-19, 2005.
Melnik et al.,S., “Similarity Flooding: A Versatile Graph Matching Algorithm and its Application to Schema Matching”, pp. 1-12, 2002.
Dasdan Ali
Papadimitriou Panagiotis
DeCarlo James J.
Gaffin Jeffrey A
Greenberg & Traurig, LLP
Kennedy Adrian L
Yahoo ! Inc.
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