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Decompounding Under General Mixing Distributions

Abstract

This study focuses on statistical inference for compound models of the form X=ξ1++ξNX=\xi_1+\ldots+\xi_N, where NN is a random variable denoting the count of summands, which are independent and identically distributed (i.i.d.) random variables ξ1,ξ2,\xi_1, \xi_2, \ldots. The paper addresses the problem of reconstructing the distribution of ξ\xi from observed samples of XX's distribution, a process referred to as decompounding, with the assumption that NN's distribution is known. This work diverges from the conventional scope by not limiting NN's distribution to the Poisson type, thus embracing a broader context. We propose a nonparametric estimate for the density of ξ\xi, derive its rates of convergence and prove that these rates are minimax optimal for suitable classes of distributions for ξ\xi and NN. Finally, we illustrate the numerical performance of the algorithm on simulated examples.

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