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On Finding Predictors for Arbitrary Families of Processes

Abstract

International audienceThe problem is sequence prediction in the following setting. A sequence x1,,xn,x_1,\dots,x_n,\dots of discrete-valued observations is generated according to some unknown probabilistic law (measure) μ\mu. After observing each outcome, it is required to give the conditional probabilities of the next observation. The measure μ\mu belongs to an arbitrary but known class CC of stochastic process measures. We are interested in predictors ρ\rho whose conditional probabilities converge (in some sense) to the ``true'' μ\mu-conditional probabilities if any μC\mu\in C is chosen to generate the sequence. The contribution of this work is in characterizing the families CC for which such predictors exist, and in providing a specific and simple form in which to look for a solution. We show that if any predictor works, then there exists a Bayesian predictor, whose prior is discrete, and which works too. We also find several sufficient and necessary conditions for the existence of a predictor, in terms of topological characterizations of the family CC, as well as in terms of local behaviour of the measures in CC, which in some cases lead to procedures for constructing such predictors. It should be emphasized that the framework is completely general: the stochastic processes considered are not required to be i.i.d., stationary, or to belong to any parametric or countable family

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