Pseudo-Labeling for Unsupervised Domain Adaptation with Kernel GLMs
作者
Authors
Nathan Weill|Kaizheng Wang
期刊
Journal
暂无期刊信息
年份
Year
2026
分类
Category
国家
Country
日本Japan
📝 摘要
Abstract
We propose a principled framework for unsupervised domain adaptation under covariate shift in kernel Generalized Linear Models (GLMs), encompassing kernelized linear, logistic, and Poisson regression with ridge regularization. Our goal is to minimize prediction error in the target domain by leveraging labeled source data and unlabeled target data, despite differences in covariate distributions. We partition the labeled source data into two batches: one for training a family of candidate models, and the other for building an imputation model. This imputation model generates pseudo-labels for the target data, enabling robust model selection. We establish non-asymptotic excess-risk bounds that characterize adaptation performance through an "effective labeled sample size", explicitly accounting for the unknown covariate shift. Experiments on synthetic and real datasets demonstrate consistent performance gains over source-only baselines.
📊 文章统计
Article Statistics
基础数据
Basic Stats
282
浏览
Views
0
下载
Downloads
40
引用
Citations
引用趋势
Citation Trend
阅读国家分布
Country Distribution
阅读机构分布
Institution Distribution
月度浏览趋势
Monthly Views