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arxiv: 2110.08710 · v3 · pith:ZJGCQ5VJ · submitted 2021-10-17 · cs.LG · cs.LO· cs.PL· stat.ML

NeuralArTS: Structuring Neural Architecture Search with Type Theory

pith:ZJGCQ5VJopen to challenge →

classification cs.LG cs.LOcs.PLstat.ML
keywords searcharchitectureneuralneuralartstypeoperationsspacessystem
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Neural Architecture Search (NAS) algorithms automate the task of finding optimal deep learning architectures given an initial search space of possible operations. Developing these search spaces is usually a manual affair with pre-optimized search spaces being more efficient, rather than searching from scratch. In this paper we present a new framework called Neural Architecture Type System (NeuralArTS) that categorizes the infinite set of network operations in a structured type system. We further demonstrate how NeuralArTS can be applied to convolutional layers and propose several future directions.

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