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Linking losses for density ratio and class-probability estimation
2016
International Conference on Machine Learning
Given samples from two densities p and q, density ratio estimation (DRE) is the problem of estimating the ratio p/q. In this paper, we formally relate DRE and class-probability estimation (CPE), and theoretically justify the use of existing losses from one problem for the other. In the CPE to DRE direction, we show that essentially any CPE loss (e.g. logistic, exponential) minimises a Bregman divergence to the true density ratio, and thus can be used for DRE. We also show how different losses
dblp:conf/icml/MenonO16
fatcat:kg5qq5fxtbbi5dcwtajmenxmsa