NAS-Bench-360: Benchmarking Neural Architecture Search on Diverse Tasks
Most existing neural architecture search (NAS) benchmarks and algorithms prioritize well-studied tasks, e.g. image classification on CIFAR or ImageNet. This makes the performance of NAS approaches in more diverse areas poorly understood. In this paper, we present NAS-Bench-360, a benchmark suite to...
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Zusammenfassung: | Most existing neural architecture search (NAS) benchmarks and algorithms
prioritize well-studied tasks, e.g. image classification on CIFAR or ImageNet.
This makes the performance of NAS approaches in more diverse areas poorly
understood. In this paper, we present NAS-Bench-360, a benchmark suite to
evaluate methods on domains beyond those traditionally studied in architecture
search, and use it to address the following question: do state-of-the-art NAS
methods perform well on diverse tasks? To construct the benchmark, we curate
ten tasks spanning a diverse array of application domains, dataset sizes,
problem dimensionalities, and learning objectives. Each task is carefully
chosen to interoperate with modern CNN-based search methods while possibly
being far-afield from its original development domain. To speed up and reduce
the cost of NAS research, for two of the tasks we release the precomputed
performance of 15,625 architectures comprising a standard CNN search space.
Experimentally, we show the need for more robust NAS evaluation of the kind
NAS-Bench-360 enables by showing that several modern NAS procedures perform
inconsistently across the ten tasks, with many catastrophically poor results.
We also demonstrate how NAS-Bench-360 and its associated precomputed results
will enable future scientific discoveries by testing whether several recent
hypotheses promoted in the NAS literature hold on diverse tasks. NAS-Bench-360
is hosted at https://nb360.ml.cmu.edu. |
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DOI: | 10.48550/arxiv.2110.05668 |