Harnessing the Power of Vicinity-Informed Analysis for Classification Under Covariate Shift
Abstract
Transfer learning enhances prediction accuracy on a target distribution by leveraging data from a source distribution, demonstrating significant benefits in various applications. This paper introduces a novel dissimilarity measure that utilizes vicinity information, i.e., the local structure of data points, to analyze the excess error in classification under covariate shift, a transfer learning setting where marginal feature distributions differ but conditional label distributions remain the same. We characterize the excess error using the proposed measure and demonstrate faster or competitive convergence rates compared to previous techniques. Notably, our approach is effective in the support non-containment assumption, which often appears in real-world applications, holds. Our theoretical analysis bridges the gap between current theoretical findings and empirical observations in transfer learning, particularly in scenarios with significant differences between source and target distributions.
Cite
Text
Fujikawa et al. "Harnessing the Power of Vicinity-Informed Analysis for Classification Under Covariate Shift." NeurIPS 2024 Workshops: M3L, 2024.Markdown
[Fujikawa et al. "Harnessing the Power of Vicinity-Informed Analysis for Classification Under Covariate Shift." NeurIPS 2024 Workshops: M3L, 2024.](https://mlanthology.org/neuripsw/2024/fujikawa2024neuripsw-harnessing/)BibTeX
@inproceedings{fujikawa2024neuripsw-harnessing,
title = {{Harnessing the Power of Vicinity-Informed Analysis for Classification Under Covariate Shift}},
author = {Fujikawa, Mitsuhiro and Akimoto, Youhei and Sakuma, Jun and Fukuchi, Kazuto},
booktitle = {NeurIPS 2024 Workshops: M3L},
year = {2024},
url = {https://mlanthology.org/neuripsw/2024/fujikawa2024neuripsw-harnessing/}
}