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Asymptotically optimal strategies for online prediction with history-dependent experts

Journal of Fourier Analysis and Applications (JFAA), 2020
Abstract

We establish sharp asymptotically optimal strategies for the problem of online prediction with history dependent experts. The prediction problem is played (in part) over a discrete graph called the dd dimensional de Bruijn graph, where dd is the number of days of history used by the experts. Previous work [11] established O(ε)O(\varepsilon) optimal strategies for n=2n=2 experts and d4d\leq 4 days of history, while [10] established O(ε1/3)O(\varepsilon^{1/3}) optimal strategies for all n2n\geq 2 and all d1d\geq 1, where the game is played for NN steps and ε=N1/2\varepsilon=N^{-1/2}. In this paper, we show that the optimality conditions over the de Bruijn graph correspond to a graph Poisson equation, and we establish O(ε)O(\varepsilon) optimal strategies for all values of nn and dd.

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