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CS(14) Transformation Methods: MixturesMixtures involve combining multiple distributions to model scenarios where the data arises from heterogeneous sources or subpopulations…4h ago4h ago
CS(13) Transformation Methods: Sums of Random VariablesThis topic focuses on Transformation Methods and Sums of Random Variables, which expand the tools for generating random variables to…6h ago6h ago
CS(12) Inverse Transformation Method for Generating Random VariablesThe Inverse Transformation method is a fundamental technique for generating random variables from any probability distribution, provided…2d ago2d ago
CS(11) Generation of Random Variables and Importance of Random SamplesThe generation of random variables is particularly relevant in Monte Carlo methods, which rely on repeated random sampling to solve…3d ago3d ago
Published inGoPenAICS(10) Efficiency of Monte Carlo EstimatorsHow to make simulations faster and more accurate5d ago5d ago