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Efficient Neural Architecture Search via Proximal Iterations

Quanming Yao, Ju Xu, Wei-Wei Tu, Zhanxing Zhu

2020Proceedings of the AAAI Conference on Artificial Intelligence102 citationsDOIOpen Access PDF

Abstract

Neural architecture search (NAS) attracts much research attention because of its ability to identify better architectures than handcrafted ones. Recently, differentiable search methods become the state-of-the-arts on NAS, which can obtain high-performance architectures in several days. However, they still suffer from huge computation costs and inferior performance due to the construction of the supernet. In this paper, we propose an efficient NAS method based on proximal iterations (denoted as NASP). Different from previous works, NASP reformulates the search process as an optimization problem with a discrete constraint on architectures and a regularizer on model complexity. As the new objective is hard to solve, we further propose an efficient algorithm inspired by proximal iterations for optimization. In this way, NASP is not only much faster than existing differentiable search methods, but also can find better architectures and balance the model complexity. Finally, extensive experiments on various tasks demonstrate that NASP can obtain high-performance architectures with more than 10 times speedup over the state-of-the-arts.

Topics & Concepts

Computer scienceSpeedupDifferentiable functionComputationProcess (computing)ArchitectureConstraint (computer-aided design)Artificial neural networkState (computer science)Artificial intelligenceMathematical optimizationTheoretical computer scienceAlgorithmParallel computingMathematicsOperating systemVisual artsMathematical analysisGeometryArtAdvanced Neural Network ApplicationsNeural Networks and ApplicationsMedical Image Segmentation Techniques