A Unified View of Label Shift Estimation

Neural Information Processing Systems 

Under label shift, the label distribution p(y) might change but the class-conditional distributions p(x y) do not. There are two dominant approaches for estimating the label marginal. BBSE, a moment-matching approach based on confusion matrices, is provably consistent and provides interpretable error bounds. However, a maximum likelihood estimation approach, which we call MLLS, dominates empirically. In this paper, we present a unified view of the two methods and the first theoretical characterization of MLLS.