Label shift adaptation aims to recover target class priors when the labelled source distribution and the unlabelled target distribution share but . Classical black-box shift estimators invert an empirical confusion matrix of a frozen classifier, producing a brittle point estimate that ignores sampling noise and similarity among classes. We present Graph-Smoothed Bayesian BBSE (GS-BSE), a fully probabilistic alternative that places Laplacian-Gaussian priors on both target log-priors and confusion-matrix columns, tying them together on a label-similarity graph. The resulting posterior is tractable with HMC or a fast block Newton-CG scheme. We prove identifiability, contraction, variance bounds that shrink with the graph's algebraic connectivity, and robustness to Laplacian misspecification. We also reinterpret GS-BSE through information geometry, showing that it generalizes existing shift estimators.
View on arXiv@article{kimura2025_2505.16251, title={ Graph-Smoothed Bayesian Black-Box Shift Estimator and Its Information Geometry }, author={ Masanari Kimura }, journal={arXiv preprint arXiv:2505.16251}, year={ 2025 } }