A Complexity-Based Theory of Compositionality
Eric Elmoznino, Thomas Jiralerspong, Yoshua Bengio, Guillaume Lajoie

TL;DR
This paper introduces a formal, measurable definition of compositionality based on algorithmic information theory, enabling better understanding and modeling of compositional representations in AI and cognitive science.
Contribution
It proposes a new, formal definition of representational compositionality that is quantitative, grounded in theory, and applicable across different representations.
Findings
Validated the definition on synthetic and real data
Unified various intuitions about compositionality from AI and cognitive science
Demonstrated estimation of compositionality using standard deep learning tools
Abstract
Compositionality is believed to be fundamental to intelligence. In humans, it underlies the structure of thought, language, and higher-level reasoning. In AI, compositional representations can enable a powerful form of out-of-distribution generalization, in which a model systematically adapts to novel combinations of known concepts. However, while we have strong intuitions about what compositionality is, we lack satisfying formal definitions for it that are measurable and mathematical. Here, we propose such a definition, which we call representational compositionality, that accounts for and extends our intuitions about compositionality. The definition is conceptually simple, quantitative, grounded in algorithmic information theory, and applicable to any representation. Intuitively, representational compositionality states that a compositional representation satisfies three properties.…
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Taxonomy
TopicsHistory and advancements in chemistry
