Revisiting Agnostic Boosting
Revisiting Agnostic Boosting
Boosting is a key method in statistical learning, allowing for converting weak learners into strong ones. While well studied in the realizable case, the statistical properties of weak-to-strong learning remains less understood in the agnostic setting, where there are no assumptions on the distribution of the labels. In this work, we propose a new agnostic boosting algorithm with substantially improved sample complexity compared to prior works under very general assumptions. Our approach is based on a reduction to the realizable case, followed by a margin-based filtering step to select high-quality hypotheses. We conjecture that the error rate achieved by our proposed method is optimal up to logarithmic factors.
Arthur da Cunha、Yuxin Sun、Mikael M?ller H?gsgaard、Andrea Paudice
计算技术、计算机技术
Arthur da Cunha,Yuxin Sun,Mikael M?ller H?gsgaard,Andrea Paudice.Revisiting Agnostic Boosting[EB/OL].(2025-03-12)[2025-05-24].https://arxiv.org/abs/2503.09384.点此复制
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