Adversarial Laws of Large Numbers and Optimal Regret in Online Classification
Noga Alon,
Omri Ben-Eliezer,
Yuval Dagan
et al.
Abstract:Laws of large numbers guarantee that given a large enough sample from some population, the measure of any fixed sub-population is well-estimated by its frequency in the sample. We study laws of large numbers in sampling processes that can affect the environment they are acting upon and interact with it. Specifically, we consider the sequential sampling model proposed by Ben-Eliezer and Yogev (2020), and characterize the classes which admit a uniform law of large numbers in this model: these are exactly the cla… Show more
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