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Reducing Neural Architecture Search Spaces with Training-Free Statistics and Computational Graph Clustering

29 April 2022
T. Ingolfsson
Mark Vero
Xiaying Wang
Lorenzo Lamberti
Luca Benini
Matteo Spallanzani
    GNN
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Abstract

The computational demands of neural architecture search (NAS) algorithms are usually directly proportional to the size of their target search spaces. Thus, limiting the search to high-quality subsets can greatly reduce the computational load of NAS algorithms. In this paper, we present Clustering-Based REDuction (C-BRED), a new technique to reduce the size of NAS search spaces. C-BRED reduces a NAS space by clustering the computational graphs associated with its architectures and selecting the most promising cluster using proxy statistics correlated with network accuracy. When considering the NAS-Bench-201 (NB201) data set and the CIFAR-100 task, C-BRED selects a subset with 70% average accuracy instead of the whole space's 64% average accuracy.

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