NAS-Bench-201: Extending the Scope of Reproducible Neural Architecture Search
Xuanyi Dong, Yi Yang

TL;DR
NAS-Bench-201 extends previous benchmarks by providing a fixed search space, multi-dataset results, and detailed diagnostics, enabling fairer and more efficient evaluation of NAS algorithms.
Contribution
It introduces NAS-Bench-201, a comprehensive, reproducible benchmark with a fixed search space and detailed data for multiple datasets, improving NAS algorithm comparison.
Findings
Benchmark includes 15,625 architectures with precomputed performance.
Provides training logs and diagnostic info for all candidates.
Benchmarking of 10 recent NAS algorithms demonstrates its utility.
Abstract
Neural architecture search (NAS) has achieved breakthrough success in a great number of applications in the past few years. It could be time to take a step back and analyze the good and bad aspects in the field of NAS. A variety of algorithms search architectures under different search space. These searched architectures are trained using different setups, e.g., hyper-parameters, data augmentation, regularization. This raises a comparability problem when comparing the performance of various NAS algorithms. NAS-Bench-101 has shown success to alleviate this problem. In this work, we propose an extension to NAS-Bench-101: NAS-Bench-201 with a different search space, results on multiple datasets, and more diagnostic information. NAS-Bench-201 has a fixed search space and provides a unified benchmark for almost any up-to-date NAS algorithms. The design of our search space is inspired from…
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Taxonomy
TopicsAdvanced Neural Network Applications · Domain Adaptation and Few-Shot Learning · Machine Learning and Data Classification
