Optimally-Weighted Estimators of the Maximum Mean Discrepancy for Likelihood-Free Inference

Abstract

Likelihood-free inference methods typically make use of a distance between simulated and real data. A common example is the maximum mean discrepancy (MMD), which has previously been used for approximate Bayesian computation, minimum distance estimation, generalised Bayesian inference, and within the nonparametric learning framework. The MMD is commonly estimated at a root-m rate, where m is the number of simulated samples. This can lead to significant computational challenges since a large m is required to obtain an accurate estimate, which is crucial for parameter estimation. In this paper, we propose a novel estimator for the MMD with significantly improved sample complexity. The estimator is particularly well suited for computationally expensive smooth simulators with low- to mid-dimensional inputs. This claim is supported through both theoretical results and an extensive simulation study on benchmark simulators.

Publication
In International Conference on Machine Learning
Ayush Bharti
Visitor, Autumn 2022
Masha Naslidnyk
Masha Naslidnyk
PhD Student
Oscar Key
Oscar Key
PhD Student
François-Xavier Briol
François-Xavier Briol
Associate Professor