A matching algorithm for generation of statistically dependent random variables with arbitrary marginals |
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Authors: | Nesa Ilich |
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Affiliation: | University of Calgary, 7128-5 Street NW, Calgary, Alberta, Canada T2K 1C8 |
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Abstract: | Simulation has gained acceptance in the operations research community as a viable method for analyzing complex problems. While random generation of variables with various marginal distributions has been studied at length, developing ability to preserve a given degree of statistical dependence among them has been lagging behind. This paper includes a short summary of the previous work and a description of the proposed algorithm for efficient re-arranging of generated random variables such that a desired product moment correlation matrix is induced. The proposed approach is different from similar algorithms that induce a desired rank-order correlation among random variables. The algorithm is demonstrated using three numerical examples, one of which also includes a comparison with @RISK commercial package. Its main features are simplicity, ease of implementation and the ability to handle either theoretical or empirical distribution functions. |
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Keywords: | Simulation Regression Stochastic processes Statistical dependence Correlation |
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