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Minimum Stein Discrepancy Estimators

Authors :
Barp, Alessandro
Briol, Francois-Xavier
Duncan, Andrew B.
Girolami, Mark
Mackey, Lester
Publication Year :
2019

Abstract

When maximum likelihood estimation is infeasible, one often turns to score matching, contrastive divergence, or minimum probability flow to obtain tractable parameter estimates. We provide a unifying perspective of these techniques as minimum Stein discrepancy estimators, and use this lens to design new diffusion kernel Stein discrepancy (DKSD) and diffusion score matching (DSM) estimators with complementary strengths. We establish the consistency, asymptotic normality, and robustness of DKSD and DSM estimators, then derive stochastic Riemannian gradient descent algorithms for their efficient optimisation. The main strength of our methodology is its flexibility, which allows us to design estimators with desirable properties for specific models at hand by carefully selecting a Stein discrepancy. We illustrate this advantage for several challenging problems for score matching, such as non-smooth, heavy-tailed or light-tailed densities.<br />Comment: Accepted for publication at NeurIPS 2019

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1906.08283
Document Type :
Working Paper