论文标题
嵌套采样的步骤采样器的比较
Comparison of Step Samplers for Nested Sampling
论文作者
论文摘要
用嵌套采样的贝叶斯推断需要一种可能限制的先验抽样方法,该方法从先前分布中绘制了超过似然阈值的样本。对于高维问题,已经提出了马尔可夫链蒙特卡洛衍生物。我们基于切片采样,命中率和差异进化算法在数值上研究了十种算法。通过嵌套采样收缩测试评估混合功能。这使我们的结果与后代的重尾无关。给定相同数量的步骤,切片采样的表现优于命中和白色的切片采样,而白色的命中率并不能提供良好的结果。提出沿着活点对的差异向量也导致了最高的效率,并且似乎有望在多模式问题上。经过测试的建议是在最超级嵌套的采样套件中实施的,从而有效地对与天文学,宇宙学,粒子物理学和天文学相关的大量实际推断问题进行了有效的低维度和高维度推断。
Bayesian inference with nested sampling requires a likelihood-restricted prior sampling method, which draws samples from the prior distribution that exceed a likelihood threshold. For high-dimensional problems, Markov Chain Monte Carlo derivatives have been proposed. We numerically study ten algorithms based on slice sampling, hit-and-run and differential evolution algorithms in ellipsoidal, non-ellipsoidal and non-convex problems from 2 to 100 dimensions. Mixing capabilities are evaluated with the nested sampling shrinkage test. This makes our results valid independent of how heavy-tailed the posteriors are. Given the same number of steps, slice sampling is outperformed by hit-and-run and whitened slice sampling, while whitened hit-and-run does not provide as good results. Proposing along differential vectors of live point pairs also leads to the highest efficiencies, and appears promising for multi-modal problems. The tested proposals are implemented in the UltraNest nested sampling package, enabling efficient low and high-dimensional inference of a large class of practical inference problems relevant to astronomy, cosmology, particle physics and astronomy.