CLAILGApr 20, 2020

Compositionality and Generalization in Emergent Languages

arXiv:2004.09124v11050 citations
AI Analysis

This work addresses the problem of understanding language emergence and compositionality for researchers in AI and linguistics, providing incremental insights into generalization and transmission mechanisms.

The paper investigates whether emergent languages in multi-agent simulations develop compositionality and how it relates to generalization, finding that compositionality naturally emerges with large input spaces, does not correlate with generalization, but aids language transmission to new learners.

Natural language allows us to refer to novel composite concepts by combining expressions denoting their parts according to systematic rules, a property known as \emph{compositionality}. In this paper, we study whether the language emerging in deep multi-agent simulations possesses a similar ability to refer to novel primitive combinations, and whether it accomplishes this feat by strategies akin to human-language compositionality. Equipped with new ways to measure compositionality in emergent languages inspired by disentanglement in representation learning, we establish three main results. First, given sufficiently large input spaces, the emergent language will naturally develop the ability to refer to novel composite concepts. Second, there is no correlation between the degree of compositionality of an emergent language and its ability to generalize. Third, while compositionality is not necessary for generalization, it provides an advantage in terms of language transmission: The more compositional a language is, the more easily it will be picked up by new learners, even when the latter differ in architecture from the original agents. We conclude that compositionality does not arise from simple generalization pressure, but if an emergent language does chance upon it, it will be more likely to survive and thrive.

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