Regret Bounds for Lifelong Learning
Machine Learning
2019-10-14 v1 Machine Learning
Abstract
We consider the problem of transfer learning in an online setting. Different tasks are presented sequentially and processed by a within-task algorithm. We propose a lifelong learning strategy which refines the underlying data representation used by the within-task algorithm, thereby transferring information from one task to the next. We show that when the within-task algorithm comes with some regret bound, our strategy inherits this good property. Our bounds are in expectation for a general loss function, and uniform for a convex loss. We discuss applications to dictionary learning and finite set of predictors. In the latter case, we improve previous bounds to where is the per task sample size.
Cite
@article{arxiv.1610.08628,
title = {Regret Bounds for Lifelong Learning},
author = {Pierre Alquier and The Tien Mai and Massimiliano Pontil},
journal= {arXiv preprint arXiv:1610.08628},
year = {2019}
}