On the Generalization Ability of On-Line Learning Algorithms
–Neural Information Processing Systems
In this paper we show that on-line algorithms for classification and re- gression can be naturally used to obtain hypotheses with good data- dependent tail bounds on their risk. Our results are proven without re- quiring complicated concentration-of-measure arguments and they hold for arbitrary on-line learning algorithms. Furthermore, when applied to concrete on-line algorithms, our results yield tail bounds that in many cases are comparable or better than the best known bounds.
Neural Information Processing Systems
Apr-6-2023, 16:37:05 GMT
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