Improved risk tail bounds for on-line algorithmsDownload PDFOpen Website

2005 (modified: 11 Nov 2022)NIPS 2005Readers: Everyone
Abstract: We prove the strongest known bound for the risk of hypotheses selected from the ensemble generated by running a learning algorithm incremen(cid:173) tally on the training data. Our result is based on proof techniques that are remarkably different from the standard risk analysis based on uniform convergence arguments.
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