Agnostic Online Learning and Excellent Sets

arxiv(2021)

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摘要
We revisit a key idea from the interaction of model theory and combinatorics, the existence of large ``indivisible'' sets, called ``$\epsilon$-excellent,'' in $k$-edge stable graphs (equivalently, Littlestone classes). Translating to the language of probability, we find a quite different existence proof for $\epsilon$-excellent sets in Littlestone classes, using regret bounds in online learning. This proof applies to any $\epsilon < {1}/{2}$, compared to $< {1}/{2^{2^k}}$ or so in the original proof. We include a second proof using closure properties and the VC theorem, with other advantages but weaker bounds. As a simple corollary, the Littlestone dimension remains finite under some natural modifications to the definition. A theme in these proofs is the interaction of two abstract notions of majority, arising from measure, and from rank or dimension; we prove that these densely often coincide and that this is characteristic of Littlestone (stable) classes. The last section lists several open problems.
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learning,excellent sets
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