Approximation of cumulative distribution functions by Bernstein phase-type distributions
A. Horváth, I. Horváth, M. Paolieri, M. Telek, E. Vicario
Abstract: The inclusion of generally distributed random variables in stochastic models is often tackled by choosing a parametric family of distributions and applying fitting algorithms to find appropriate parameters. A recent paper proposed the approximation of probability density functions (PDFs) by Bernstein exponentials, which are obtained from Bernstein polynomials by a change of variable and result in a particular case of acyclic phase-type distributions. In this paper, we show that this approximation can also be applied to cumulative distribution functions (CDFs), which enjoys advantageous properties; by focusing on CDFs, we propose an approach to obtain stochastically ordered approximations.
Proceedings of QEST+FORMATS, pp. 90-106, Springer, 2024 2024Stochastic ProcessesTheory🏆 Best Paper
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