资源论文Online Learning: Random Averages, Combinatorial Parameters, and Learnability

Online Learning: Random Averages, Combinatorial Parameters, and Learnability

2020-01-06 | |  105 |   45 |   0

Abstract

We develop a theory of online learning by defining several complexity measures. Among them are analogues of Rademacher complexity, covering numbers and fatshattering dimension from statistical learning theory. Relationship among these complexity measures, their connection to online learning, and tools for bounding them are provided. We apply these results to various learning problems. We provide a complete characterization of online learnability in the supervised setting.

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