Title: ConceptNet - a pratical commonsense reasoning tool-kit
1ConceptNet - a pratical commonsense reasoning
tool-kit
- H Liu and P Singh
- MIT Media Lab
- Speaker Yi-Ching(Janet) Huang
2Introduction
- ConceptNet
- Freely available commonsense knowledge base
- Natual-language-processing tool-kit
- It supports many practical textual-reasoning
tasks over real-world documents
3Outline
- Comparison of ConceptNet, Cyc, and WordNet
- History, Construction and Structure
- Various contextual reasoning tasks
- Quantitative and Qualitative Analysis
- Conclusion
4Comparison
Database content Resource Capabilities
ConceptNet (2002) Commonsense OMCS (from the public) (automatic) Contextual inference
WordNet (1985) Semantic Lexicon Expert (manual) Lexical categorisation word-similarity
Cyc (1984) Commonsense Expert (manual) Formalized logical reasoning
5History of ConceptNet
1984
2000
2002
2004
6Building ConceptNet
- 3 phases
- Extraction phase
- Extract from OMCS corpus
- English sentence -gt binary-relation assertion
- Normalization phase
- Relaxation phase
- Produce inferred assertion
- Improve the connectivity of the network
7Structure of the ConceptNet knowledge base
- 1.6 million assertions (1.25 million are k-lines)
- twenty relation-types
8(No Transcript)
9Practical commonsense reasoning
- An integrated natural-language-processing engine
- MontyLingua
- Text document --gt VSOO frames
- Reasoning capabilities
- Node-level reasoning
- Document-level reasoning
10Node-level reasoning
- Contextual neighborhoods
- Spreading activation
- Analogy-making
- Projection
11Document-level reasoning
- Topic-gisting
- Disambiguation and classification
- Novel-concept identification
- Affect sensing
12Characteristics and quality
- ConceptNets reasoning abilities hinge largely on
the quality of its knowledge
13Characteristics of the KB
- The histogram of nodal word-lengths
70
14Characteristic of the KB
- Average frequency an assertion is uttered of
inferred
90 uttered
15Characteristics of the KB
- The connectivity of nodes in ConceptNet by
measuring nodal edge-density
16Quality of the knowledge
- Two dimensions of quality of ConceptNet, rated by
human judges
17Applications of ConceptNet
Commonsense Investing
ARIA
OMAdventure
AAA
GOOSE
Commonsense Predictive Text Entry
LifeNet
GloBuddy
Metafor
Emotus Ponens
MAKEBELIEVE
Overhear
SAM
Bubble Lexicon
What Would They Think?
18Commonsense ARIA
- Analyize E-mails content and suggest the related
photos
19Emotus Ponens
20MakeBelieve
21Conclusion
- ConceptNet is presently the largest freely
commonsense database - Support many practical textual-reasoning tasks
- Goodness
- Easy to use
- Simple structure of WordNet
- Good for practical commonsense reasoning