articleJul 12, 2012Closed access
Semantic Compositionality through Recursive Matrix-Vector Spaces
Abstract
Single-word vector space models have been very successful at learning lexical information. However, they cannot capture the compositional meaning of longer phrases, preventing them from a deeper understanding of language. We introduce a recursive neural network (RNN) model that learns compositional vector representations for phrases and sentences of arbitrary syntactic type and length. Our model assigns a vector and a matrix to every node in a parse tree: the vector captures the inherent meaning of the constituent, while the matrix captures how it changes the meaning of neighboring words or phrases. This matrix-vector RNN can learn the meaning of operators in propositional logic and natural language. The model…
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Topics
Keywords
- Principle of compositionality
- Computer science
- Artificial intelligence
- Natural language processing
- Parsing
- Recurrent neural network
- Word (group theory)
- Vector space
UN Sustainable Development Goals
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