Robust Score Matching

Published: 22 Jan 2025, Last Modified: 06 Mar 2025AISTATS 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Abstract: Proposed in Hyvärinen (2005), score matching is a statistical estimation procedure that does not require computation of distributional normalizing constants. In this work we utilize the geometric median of means to develop a robust score matching procedure that yields consistent parameter estimates in settings where the observed data has been contaminated. A special appeal of the proposed method is that it retains convexity in exponential family models. The new method is therefore particularly attractive for non-Gaussian, exponential family graphical models where evaluation of normalizing constants is intractable. Support recovery guarantees for such models when contamination is present are provided. Additionally, support recovery is studied in numerical experiments and on a precipitation dataset. We demonstrate that the proposed robust score matching estimator performs comparably to the standard score matching estimator when no contamination is present but greatly outperforms this estimator in a setting with contamination.
Submission Number: 440
Loading