Fast Learning from Non-i.i.d. ObservationsDownload PDFOpen Website

2009 (modified: 11 Nov 2022)NIPS 2009Readers: Everyone
Abstract: We prove an oracle inequality for generic regularized empirical risk minimization algorithms learning from $\a$-mixing processes. To illustrate this oracle inequality, we use it to derive learning rates for some learning methods including least squares SVMs. Since the proof of the oracle inequality uses recent localization ideas developed for independent and identically distributed (i.i.d.) processes, it turns out that these learning rates are close to the optimal rates known in the i.i.d. case.
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