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Asymptotically optimal strategies for online prediction with history-dependent experts

31 August 2020
Jeff Calder
Nadejda Drenska
    OffRL
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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 ddd dimensional de Bruijn graph, where ddd is the number of days of history used by the experts. Previous work [11] established O(ε)O(\varepsilon)O(ε) optimal strategies for n=2n=2n=2 experts and d≤4d\leq 4d≤4 days of history, while [10] established O(ε1/3)O(\varepsilon^{1/3})O(ε1/3) optimal strategies for all n≥2n\geq 2n≥2 and all d≥1d\geq 1d≥1, where the game is played for NNN steps and ε=N−1/2\varepsilon=N^{-1/2}ε=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)O(ε) optimal strategies for all values of nnn and ddd.

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