Modeling discrete mixtures of distributions

Main Article Content

K.P. Pylypenka
A.I. Krasilnikov

Abstract

A simple algorithm for modeling independent stochastic variables which distribution function is finite discrete mixture was grounded. Proposed algorithm was verified by modeling two-component Gaussian mixture

Article Details

How to Cite
Pylypenka, K. ., & Krasilnikov, A. . (2010). Modeling discrete mixtures of distributions. Electronics and Communications, 15(2), 51–56. https://doi.org/10.20535/2312-1807.2010.15.2.307028
Section
Theory of signals and systems

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