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Published byMoses Reeves Modified over 8 years ago
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Plan for today Introduction Graph Matching Method Theme Recognition Comparison Conclusion
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Introduction Fact: growth of information sources Problem: impossible to read everything Assumption: documents are structured Solution: automated summary!
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Graph Matching Mani & Bloedorn, 1997, MITRE company - Word is a node -Adjacency links -For each phrase: -Find different -Find common -FSD algorithm: -C- and D-score -Phrase links Articles Graphs Words Summary? Phrases -Name links -Same links -Spreading act. -Select best ones
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Theme Recognition McKeown et al., 1999, Columbia Univ. -break into paragraphs -find similarities -preprocess phrases -match phrase trees -make grammar trees -break into phrases -construct sentences -cluster similar para’s Articles Themes Phrases Summary Sentences
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Comparison 5 issues –Content Representation –Information Fusion –Semantics Preservation –Scalability –Domain Independence
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Content Representation Graph Matching –keeps doc’s apart –scale: word Theme Recognition –all doc’s on one pile –scale: paragraph
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Information Fusion Graph MatchingTheme Recognition
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Semantics Preservation Graph MatchingTheme Recognition
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Scalability Graph MatchingTheme Recognition
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Domain Independence Graph MatchingTheme Recognition
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Conclusion
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