Adaptive rejection sampling with fixed number of nodes |
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Authors: | L. Martino F. Louzada |
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Affiliation: | Institute of Mathematical Sciences and Computing, Universidade de S?o Paulo, S?o Paulo, Brazil |
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Abstract: | The adaptive rejection sampling (ARS) algorithm is a universal random generator for drawing samples efficiently from a univariate log-concave target probability density function (pdf). ARS generates independent samples from the target via rejection sampling with high acceptance rates. Indeed, ARS yields a sequence of proposal functions that converge toward the target pdf, so that the probability of accepting a sample approaches one. However, sampling from the proposal pdf becomes more computational demanding each time it is updated. In this work, we propose a novel ARS scheme, called Cheap Adaptive Rejection Sampling (CARS), where the computational effort for drawing from the proposal remains constant, decided in advance by the user. For generating a large number of desired samples, CARS is faster than ARS. |
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Keywords: | Adaptive rejection sampling Monte Carlo methods Rejection sampling |
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