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arxiv: 2402.02104 · v2 · pith:4VXPPP5K · submitted 2024-02-03 · cs.LG · cs.PL

Learning Structure-Aware Representations of Dependent Types

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classification cs.LG cs.PL
keywords learningagdamachineproofarchitecturedatasetdependently-typedlanguage
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Agda is a dependently-typed programming language and a proof assistant, pivotal in proof formalization and programming language theory. This paper extends the Agda ecosystem into machine learning territory, and, vice versa, makes Agda-related resources available to machine learning practitioners. We introduce and release a novel dataset of Agda program-proofs that is elaborate and extensive enough to support various machine learning applications -- the first of its kind. Leveraging the dataset's ultra-high resolution, which details proof states at the sub-type level, we propose a novel neural architecture targeted at faithfully representing dependently-typed programs on the basis of structural rather than nominal principles. We instantiate and evaluate our architecture in a premise selection setup, where it achieves promising initial results, surpassing strong baselines.

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