Snowballing Nested Sampling

Johannes Buchner
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Abstract

A new way to run nested sampling, combined with realistic MCMC proposals to generate new live points, is presented. Nested sampling is run with a fixed number of MCMC steps. Subsequently, snowballing nested sampling extends the run to more and more live points. This stabilizes MCMC proposals over time, and leads to pleasant properties, including that the number of live points and number of MCMC steps do not have to be calibrated, that the evidence and posterior approximation improves as more compute is added and can be diagnosed with convergence diagnostics from the MCMC literature. Snowballing nested sampling converges to a ``perfect'' nested sampling run with infinite number of MCMC steps.
滚雪球式嵌套抽样
本文介绍了一种运行嵌套采样的新方法,结合现实的 MCMC 建议来生成新的活点。嵌套采样以固定的 MCMC 步数运行。随后,滚雪球式嵌套采样将运行扩展到越来越多的活点。这将使 MCMC 提议随时间推移而稳定,并带来令人愉悦的特性,包括无需校准实时点数和 MCMC 步数,随着计算量的增加,证据和后验近似值也会提高,并可通过 MCMC 文献中的收敛诊断进行诊断。滚雪球嵌套采样会收敛到具有无限 MCMC 步数的 "完美 "嵌套采样运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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