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arxiv: 2004.02339 · v1 · pith:MQC7UGAR · submitted 2020-04-05 · cs.DS

Random Sampling using k-vector

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classification cs.DS
keywords k-vectorrandomdistributionsamplesapproachgenerationmassivenonlinear
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This work introduces two new techniques for random number generation with any prescribed nonlinear distribution based on the k-vector methodology. The first approach is based on inverse transform sampling using the optimal k-vector to generate the samples by inverting the cumulative distribution. The second approach generates samples by performing random searches in a pre-generated large database previously built by massive inversion of the prescribed nonlinear distribution using the k-vector. Both methods are shown suitable for massive generation of random samples. Examples are provided to clarify these methodologies.

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