2022
DOI: 10.48550/arxiv.2208.04055
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Neural Set Function Extensions: Learning with Discrete Functions in High Dimensions

Abstract: Integrating functions on discrete domains into neural networks is key to developing their capability to reason about discrete objects. But, discrete domains are (1) not naturally amenable to gradient-based optimization, and (2) incompatible with deep learning architectures that rely on representations in high-dimensional vector spaces. In this work, we address both difficulties for set functions, which capture many important discrete problems. First, we develop a framework for extending set functions onto low-… Show more

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