Representing word meaning and order information in a composite holographic lexicon.
University of Colorado Boulder · Queen's University
Abstract
The authors present a computational model that builds a holographic lexicon representing both word meaning and word order from unsupervised experience with natural language. The model uses simple convolution and superposition mechanisms (cf. B. B. Murdock, 1982) to learn distributed holographic representations for words. The structure of the resulting lexicon can account for empirical data from classic experiments studying semantic typicality, categorization, priming, and semantic constraint in sentence completions. Furthermore, order information can be retrieved from the holographic representations, allowing the model to account for limited word transitions without the need for built-in transition rules. The…
Citation impact
- FWCI
- 30.96
- Percentile
- 100%
- References
- 182
Authors
2Topics & keywords
- Lexicon
- Natural language processing
- Computer science
- Mental lexicon
- Sentence
- Artificial intelligence
- Meaning (existential)
- Categorization
- Quality Education