资源论文Information-Theoretic Generalization Bounds for SGLD via Data-Dependent Estimates

Information-Theoretic Generalization Bounds for SGLD via Data-Dependent Estimates

2020-02-20 | |  72 |   46 |   0

Abstract

In this work, we improve upon the stepwise analysis of noisy iterative learning algorithms initiated by Pensia, Jog, and Loh (2018) and recently extended by Bu, Zou, and Veeravalli (2019). Our main contributions are significantly improved mutual information bounds for Stochastic Gradient Langevin Dynamics via datadependent estimates. Our approach is based on the variational characterization of mutual information and the use of data-dependent priors that forecast the minibatch gradient based on a subset of the training samples. Our approach is broadly applicable within the information-theoretic framework of Russo and Zou (2015) and Xu and Raginsky (2017). Our bound can be tied to a measure of flatness of the empirical risk surface. As compared with other bounds that depend on the squared norms of gradients, empirical investigations show that the terms in our bounds are orders of magnitude smaller.

上一篇:Logarithmic Regret for Online Control

下一篇:Prediction of Spatial Point Processes: Regularized Method with Out-of-Sample Guarantees

用户评价
全部评价

热门资源

  • The Variational S...

    Unlike traditional images which do not offer in...

  • Learning to Predi...

    Much of model-based reinforcement learning invo...

  • Stratified Strate...

    In this paper we introduce Stratified Strategy ...

  • A Mathematical Mo...

    Direct democracy, where each voter casts one vo...

  • Rating-Boosted La...

    The performance of a recommendation system reli...