A Unified Framework for Multi-distribution Density Ratio EstimationDownload PDF

29 Sept 2021 (modified: 13 Feb 2023)ICLR 2022 Conference Withdrawn SubmissionReaders: Everyone
Keywords: multi-distribution density ratio estimation, Bregman divergence, proper scoring rules
Abstract: Binary density ratio estimation (DRE), the problem of estimating the ratio $p_1/p_2$ given their empirical samples, provides the foundation for many state-of-the-art machine learning algorithms such as contrastive representation learning and covariate shift adaptation. In this work, we consider a generalized setting where given samples from multiple distributions $p_1, \ldots, p_k$ (for $k > 2$), we aim to efficiently estimate the density ratios between all pairs of distributions. Such a generalization leads to important new applications such as estimating statistical discrepancy among multiple random variables like multi-distribution $f$-divergence and bias correction via multiple importance sampling. We then develop a general framework from the perspective of Bregman divergence minimization, where each strictly convex multivariate function induces a proper loss for multi-distribution DRE. Moreover, we formally relate multi-distribution density ratio estimation and class probability estimation, theoretically justifying the use of any strictly proper scoring rule composite with a link function for multi-distribution DRE. We show that our framework leads to methods that strictly generalize their counterparts in binary DRE, as well as new methods that show comparable or superior performance on various downstream tasks.
One-sentence Summary: We provide a unified framework based on expected Bregman divergence minimization to solve the generalized problem of density ratio estimation among multiple distributions.
5 Replies

Loading