Information theory-based compositional distributional semantics

Publication date

2023-01-19T18:55:34Z

2023-01-19T18:55:34Z

2022-12-01

2023-01-19T18:55:34Z

Abstract

In the context of text representation, Compositional Distributional Semantics models aim to fuse the Distributional Hypothesis and the Principle of Compositionality. Text embedding is based on co-ocurrence distributions and the representations are in turn combined by compositional functions taking into account the text structure. However, the theoretical basis of compositional functions is still an open issue. In this article we define and study the notion of Information Theory-based Compositional Distributional Semantics (ICDS): (i) We first establish formal properties for embedding, composition, and similarity functions based on Shannon's Information Theory; (ii) we analyze the existing approaches under this prism, checking whether or not they comply with the established desirable properties; (iii) we propose two parameterizable composition and similarity functions that generalize traditional approaches while fulfilling the formal properties; and finally (iv) we perform an empirical study on several textual similarity datasets that include sentences with a high and low lexical overlap, and on the similarity between words and their description. Our theoretical analysis and empirical results show that fulfilling formal properties affects positively the accuracy of text representation models in terms of correspondence (isometry) between the embedding and meaning spaces.

Document Type

Article


Published version

Language

English

Publisher

The MIT Press

Related items

Reproducció del document publicat a: https://doi.org/10.1162/coli_a_00454

Computational Linguistics, 2022, vol. 48, num. 4, p. 907-948

https://doi.org/10.1162/coli_a_00454

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Rights

cc-by-nc-nd (c) Association for Computational Linguistics, 2022

https://creativecommons.org/licenses/by-nc-nd/4.0/

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