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Generalization bounds for mixing processes via delayed online-to-PAC conversions

By Baptiste Abélès and others
We study the generalization error of statistical learning algorithms in a non-i.i.d. setting, where the training data is sampled from a stationary mixing process. We develop an analytic framework for this scenario based on a reduction to online learning with delayed feedback. In particular, we show that the existence of... Show more
June 18, 2024
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Generalization bounds for mixing processes via delayed online-to-PAC conversions
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