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A Global Stochastic Optimization Particle Filter Algorithm

Machine Learning 2022-07-07 v9 Statistics Theory Computation Statistics Theory

Abstract

We introduce a new online algorithm for expected log-likelihood maximization in situations where the objective function is multi-modal and/or has saddle points, that we term G-PFSO. The key element underpinning G-PFSO is a probability distribution which (a) is shown to concentrate on the target parameter value as the sample size increases and (b) can be efficiently estimated by means of a standard particle filter algorithm. This distribution depends on a learning rate, where the faster the learning rate the quicker it concentrates on the desired element of the search space, but the less likely G-PFSO is to escape from a local optimum of the objective function. In order to achieve a fast convergence rate with a slow learning rate, G-PFSO exploits the acceleration property of averaging, well-known in the stochastic gradient literature. Considering several challenging estimation problems, the numerical experiments show that, with high probability, G-PFSO successfully finds the highest mode of the objective function and converges to its global maximizer at the optimal rate. While the focus of this work is expected log-likelihood maximization, the proposed methodology and its theory apply more generally for optimizing a function defined through an expectation.

Keywords

Cite

@article{arxiv.2007.04803,
  title  = {A Global Stochastic Optimization Particle Filter Algorithm},
  author = {Mathieu Gerber and Randal Douc},
  journal= {arXiv preprint arXiv:2007.04803},
  year   = {2022}
}

Comments

62 pages, 1 table, 4 figures (final version-correction of an hyperlink)