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Papers/SGAS: Sequential Greedy Architecture Search

SGAS: Sequential Greedy Architecture Search

Guohao Li, Guocheng Qian, Itzel C. Delgadillo, Matthias Müller, Ali Thabet, Bernard Ghanem

2019-11-30CVPR 2020 6Image ClassificationNeural Architecture SearchNode ClassificationGeneral ClassificationClassificationPoint Cloud Classification
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Abstract

Architecture design has become a crucial component of successful deep learning. Recent progress in automatic neural architecture search (NAS) shows a lot of promise. However, discovered architectures often fail to generalize in the final evaluation. Architectures with a higher validation accuracy during the search phase may perform worse in the evaluation. Aiming to alleviate this common issue, we introduce sequential greedy architecture search (SGAS), an efficient method for neural architecture search. By dividing the search procedure into sub-problems, SGAS chooses and prunes candidate operations in a greedy fashion. We apply SGAS to search architectures for Convolutional Neural Networks (CNN) and Graph Convolutional Networks (GCN). Extensive experiments show that SGAS is able to find state-of-the-art architectures for tasks such as image classification, point cloud classification and node classification in protein-protein interaction graphs with minimal computational cost. Please visit https://www.deepgcns.org/auto/sgas for more information about SGAS.

Results

TaskDatasetMetricValueModel
Neural Architecture SearchCIFAR-10Search Time (GPU days)0.25SGAS
Neural Architecture SearchImageNetAccuracy75.9SGAS
Neural Architecture SearchImageNetTop-1 Error Rate24.1SGAS
AutoMLCIFAR-10Search Time (GPU days)0.25SGAS
AutoMLImageNetAccuracy75.9SGAS
AutoMLImageNetTop-1 Error Rate24.1SGAS
Node ClassificationPPIF199.46SGAS

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