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Papers/Automated Dominative Subspace Mining for Efficient Neural ...

Automated Dominative Subspace Mining for Efficient Neural Architecture Search

Yaofo Chen, Yong Guo, Daihai Liao, Fanbing Lv, Hengjie Song, James Tin-Yau Kwok, Mingkui Tan

2022-10-31Neural Architecture Search
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Abstract

Neural Architecture Search (NAS) aims to automatically find effective architectures within a predefined search space. However, the search space is often extremely large. As a result, directly searching in such a large search space is non-trivial and also very time-consuming. To address the above issues, in each search step, we seek to limit the search space to a small but effective subspace to boost both the search performance and search efficiency. To this end, we propose a novel Neural Architecture Search method via Dominative Subspace Mining (DSM-NAS) that finds promising architectures in automatically mined subspaces. Specifically, we first perform a global search, i.e ., dominative subspace mining, to find a good subspace from a set of candidates. Then, we perform a local search within the mined subspace to find effective architectures. More critically, we further boost search performance by taking well-designed/ searched architectures to initialize candidate subspaces. Experimental results demonstrate that DSM-NAS not only reduces the search cost but also discovers better architectures than state-of-the-art methods in various benchmark search spaces.

Results

TaskDatasetMetricValueModel
Neural Architecture SearchNAS-Bench-201, ImageNet-16-120Accuracy (Val)46.66ASE-NAS+
Neural Architecture SearchNAS-Bench-201, CIFAR-100Accuracy (Val)73.12ASE-NAS+
AutoMLNAS-Bench-201, ImageNet-16-120Accuracy (Val)46.66ASE-NAS+
AutoMLNAS-Bench-201, CIFAR-100Accuracy (Val)73.12ASE-NAS+

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