Stochastic Gradient Hamiltonian Monte Carlo with Variance Reduction for Bayesian Inference

March 29, 2018 ยท Declared Dead ยท ๐Ÿ› Machine-mediated learning

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Authors Zhize Li, Tianyi Zhang, Shuyu Cheng, Jun Zhu, Jian Li arXiv ID 1803.11159 Category cs.LG: Machine Learning Cross-listed cs.DS, stat.ML Citations 20 Venue Machine-mediated learning Last Checked 4 months ago
Abstract
Gradient-based Monte Carlo sampling algorithms, like Langevin dynamics and Hamiltonian Monte Carlo, are important methods for Bayesian inference. In large-scale settings, full-gradients are not affordable and thus stochastic gradients evaluated on mini-batches are used as a replacement. In order to reduce the high variance of noisy stochastic gradients, Dubey et al. [2016] applied the standard variance reduction technique on stochastic gradient Langevin dynamics and obtained both theoretical and experimental improvements. In this paper, we apply the variance reduction tricks on Hamiltonian Monte Carlo and achieve better theoretical convergence results compared with the variance-reduced Langevin dynamics. Moreover, we apply the symmetric splitting scheme in our variance-reduced Hamiltonian Monte Carlo algorithms to further improve the theoretical results. The experimental results are also consistent with the theoretical results. As our experiment shows, variance-reduced Hamiltonian Monte Carlo demonstrates better performance than variance-reduced Langevin dynamics in Bayesian regression and classification tasks on real-world datasets.
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