Efficient Variational Inference for Sparse Deep Learning with Theoretical Guarantee

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Authors Jincheng Bai, Qifan Song, Guang Cheng arXiv ID 2011.07439 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG, math.ST Citations 49 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Sparse deep learning aims to address the challenge of huge storage consumption by deep neural networks, and to recover the sparse structure of target functions. Although tremendous empirical successes have been achieved, most sparse deep learning algorithms are lacking of theoretical support. On the other hand, another line of works have proposed theoretical frameworks that are computationally infeasible. In this paper, we train sparse deep neural networks with a fully Bayesian treatment under spike-and-slab priors, and develop a set of computationally efficient variational inferences via continuous relaxation of Bernoulli distribution. The variational posterior contraction rate is provided, which justifies the consistency of the proposed variational Bayes method. Notably, our empirical results demonstrate that this variational procedure provides uncertainty quantification in terms of Bayesian predictive distribution and is also capable to accomplish consistent variable selection by training a sparse multi-layer neural network.
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