2021
DOI: 10.1007/978-3-030-91695-4_15
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Markov-Chain Monte Carlo

Abstract: Due to the high dimensionality or multimodality that is common in modern astronomy, sampling Bayesian posteriors can be challenging. Several publicly available codes based on different sampling algorithms can solve these complex models, but the execution of the code is not always efficient or fast enough. The article introduces a C language general-purpose code, Nii-C a) (Jin 2024), that implements a framework of Automatic Parallel Tempering Markov Chain Monte Carlo. Automatic in this context means that the pa… Show more

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