Publication | Closed Access
Concave-Convex Adaptive Rejection Sampling
57
Citations
35
References
2011
Year
Mathematical ProgrammingEngineeringConcave-convex Adaptive RejectionRejection SamplingMarkov Chain Monte CarloData ScienceSignal ReconstructionBiostatisticsPublic HealthApproximation TheoryStatisticsSampling TheorySampling (Statistics)Inverse ProblemsMonte Carlo SamplingSequential Monte CarloIndependent SamplesAdaptive RejectionStatistical InferenceApproximate Bayesian Computation
We describe a method for generating independent samples from univariate density functions using adaptive rejection sampling without the log-concavity requirement. The method makes use of the fact that many functions can be expressed as a sum of concave and convex functions. Using a concave-convex decomposition, we bound the log-density by separately bounding the concave and convex parts using piecewise linear functions. The upper bound can then be used as the proposal distribution in rejection sampling. We demonstrate the applicability of the concave-convex approach on a number of standard distributions and describe an application to the efficient construction of sequential Monte Carlo proposal distributions for inference over genealogical trees. Computer code for the proposed algorithms is available online.
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