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Uniform error bounds for a continuous approximation of non-negative random variables

11 October 2010
Carmen Sanguesa
ArXiv (abs)PDFHTML
Abstract

In this work, we deal with approximations for distribution functions of non-negative random variables. More specifically, we construct continuous approximants using an acceleration technique over a well-know inversion formula for Laplace transforms. We give uniform error bounds using a representation of these approximations in terms of gamma-type operators. We apply our results to certain mixtures of Erlang distributions which contain the class of continuous phase-type distributions.

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