English

Stochastic Online Optimization using Kalman Recursion

Machine Learning 2020-06-29 v2 Artificial Intelligence Optimization and Control Statistics Theory Statistics Theory

Abstract

We study the Extended Kalman Filter in constant dynamics, offering a bayesian perspective of stochastic optimization. We obtain high probability bounds on the cumulative excess risk in an unconstrained setting. In order to avoid any projection step we propose a two-phase analysis. First, for linear and logistic regressions, we prove that the algorithm enters a local phase where the estimate stays in a small region around the optimum. We provide explicit bounds with high probability on this convergence time. Second, for generalized linear regressions, we provide a martingale analysis of the excess risk in the local phase, improving existing ones in bounded stochastic optimization. The EKF appears as a parameter-free online algorithm with O(d^2) cost per iteration that optimally solves some unconstrained optimization problems.

Keywords

Cite

@article{arxiv.2002.03636,
  title  = {Stochastic Online Optimization using Kalman Recursion},
  author = {Joseph de Vilmarest and Olivier Wintenberger},
  journal= {arXiv preprint arXiv:2002.03636},
  year   = {2020}
}