Simulating Data with SAS
multivariate distributions. You can use the RANDGEN subroutine to generate random values from standard univariate distributions, or you can use several predefined modules to generate data from multivariate distributions. You can extend the SAS/IML language by defining new functions that sample from distributions that are not built into SAS.
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