On the Correspondence between Compositionality and Imitation in Emergent Neural Communication

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Abstract

Compositionality is a hallmark of human language that not only enables linguistic generalization, but also potentially facilitates acquisition. When simulating language emergence with neural networks, compositionality has been shown to improve communication performance; however, its impact on imitation learning has yet to be investigated. Our work explores the link between compositionality and imitation in a Lewis game played by deep neural agents. Our contributions are twofold: first, we show that the learning algorithm used to imitate is crucial: supervised learning tends to produce more average languages, while reinforcement learning introduces a selection pressure toward more compositional languages. Second, our study reveals that compositional languages are easier to imitate, which may induce the pressure toward compositional languages in RL imitation settings.

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APA

Cheng, E., Rita, M., & Poibeau, T. (2023). On the Correspondence between Compositionality and Imitation in Emergent Neural Communication. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (pp. 12432–12447). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2023.findings-acl.787

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