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Colloquium of the Faculty of Computer Science
February 22, 2018 18:10, Moscow


Perturbed Proximal Gradient Algorithms

Eric Moulines

École Polytechnique


https://www.youtube.com/watch?v=JSUgt1Atlc8

Abstract: We study a version of the proximal gradient algorithm for which the gradient is intractable and is approximated by Monte Carlo methods (and, in particular, Markov Chain Monte Carlo). We derive conditions on the step size and the Monte Carlo batch size under which convergence is guaranteed: both increasing batch size and constant batch size are considered. We also derive non-asymptotic bounds for an averaged version. Our results cover the cases of biased and unbiased Monte Carlo approximation. To support our findings, we discuss the inference of a sparse generalized linear model with random effect and the problem of learning the edge structure and parameters of sparse undirected graphical models.


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