Simulating Multivariate Distributions with Sparse Data: A Kernal Density Smoothing Procedure

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Often analysts must conduct risk analysis based on a small number of observations. This paper describes and illustrates the use of a kernel density estimation procedure to smooth out irregularities in such a sparse data set for simulating univariate and multivariate probability distributions.

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