Adaptive estimation of the transition density of a Markov chain
Abstract
In this paper a new estimator for the transition density π of an homogeneous Markov chain is considered. We introduce an original contrast derived from regression framework and we use a model selection method to estimate π under mild conditions. The resulting estimate is adaptive with an optimal rate of convergence over a large range of anisotropic Besov spaces B2,∞(α1,α2). Some simulations are also presented.
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