- Page 1: Lexical Knowledge Structures By Ash
- Page 5 and 6: SHRDLU : a success story. Considere
- Page 7 and 8: ConceptNet ConceptNet A K Nirala Le
- Page 9 and 10: Typical relations in concept net A
- Page 11 and 12: Relations in ConceptNet Agents, Thi
- Page 13 and 14: Relations in ConceptNet Functional,
- Page 15 and 16: Development Process of ConceptNet v
- Page 17 and 18: Extraction phase Relations are extr
- Page 19 and 20: Relaxation phase (contd.) SuperThem
- Page 21 and 22: Evaluation of accumulated data 8 ju
- Page 23 and 24: Knowledge acquisition from the gene
- Page 25 and 26: OMCS web interface A sample web int
- Page 27 and 28: Feedback and Inference (contd.) Met
- Page 29 and 30: More user inputs Clarification by s
- Page 31 and 32: ConceptNet5 ConceptNet5 released on
- Page 33 and 34: URI hierarchy Uniform Resource Iden
- Page 35 and 36: Concept URIs Each concept has minim
- Page 37 and 38: ConceptNet5.1 WEB API Lookup : When
- Page 39 and 40: API for Association BASE URL : http
- Page 41 and 42: GOOSE 2004 Goal-Oriented Search Eng
- Page 43 and 44: GOOSE : a scenario [3] Goal : I wan
- Page 45 and 46: Other applications [4] Commonsense
- Page 47 and 48: Information Extraction Google searc
- Page 49 and 50: YAGO data model, few examples Elvis
- Page 51 and 52: YAGO Model: Formal view common enti
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Classes for all literals Classes fo
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Semantics : Rewrite rule (contd.)
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Semantics : Rewrite rule (contd) Gi
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Theorems & Corollary Given F = (I
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Sources for YAGO Sources and Inform
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Information Extraction Two steps (Y
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Infoboxes Infobox type establishes
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Types of facts Category system of W
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Defining hierarchy of classes using
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Word heuristics A means relation is
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Quality Control & Type Checking Can
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Evaluating YAGO Randomly selected f
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YAGO 2 : Extensible Extraction Arch
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Information Extraction from differe
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YAGO in development of ontologies Y
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Downloading YAGO Freely available a
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VerbOcean Developed at University o
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Relations captured by VerbOcean Sim
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Relations captured by VerbOcean Ena
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Extracting Associated verb pairs 1.
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Lexico-syntactic patterns (contd.)
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Lexico-syntactic patterns (contd.)
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Scoring the verb pair on the patter
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Pruning If the pattern matching was
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Bibliography I Timothy Chklovski an
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Bibliography III Mueller E T Lim G