Differentiable Architecture Search with Ensemble Gumbel-Softmax

Chang, Jianlong, Zhang, Xinbang, Guo, Yiwen, Meng, Gaofeng, Xiang, Shiming, Pan, Chunhong

arXiv.org Machine Learning 

For network architecture search (NAS), it is crucial but challenging to simultaneously guarantee both effectiveness and efficiency. Towards achieving this goal, we develop a differentiable NAS solution, where the search space includes arbitrary feed-forward network consisting of the predefined number of connections. Benefiting from a proposed ensemble Gumbel-Softmax estimator, our method optimizes both the architecture of a deep network and its parameters in the same round of backward propagation, yielding an end-to-end mechanism of searching network architectures. Extensive experiments on a variety of popular datasets strongly evidence that our method is capable of discovering high-performance architectures, while guaranteeing the requisite efficiency during searching.

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