In this lecture, we review random-number generation and tests of uniformity and independence. We then focus on random-variate generation (for stochastic simulation) using inverse-transform sampling.
Archived lectures from undergraduate course on stochastic simulation given at Arizona State University by Ted Pavlic
Tuesday, September 29, 2020
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