Composition in Distributional Models of Semantics
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Abstract
Vector-based models of word meaning have become increasingly popular in cognitive science. The appeal of these models lies in their ability to represent meaning simply by using distributional information under the assumption that words occurring within similar contexts are semantically similar. Despite their widespread use, vector-based models are typically directed at representing words in isolation, and methods for constructing representations for phrases or sentences have received little attention in the literature. This is in marked contrast to experimental evidence (e.g., in sentential priming) suggesting that semantic similarity is more complex than simply a relation between isolated words. This article…
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Topics
Keywords
- Natural language processing
- Computer science
- Distributional semantics
- Operationalization
- Phrase
- Artificial intelligence
- Meaning (existential)
- Word (group theory)
UN Sustainable Development Goals
- Quality Education
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