We aim to improve upon the exploration of the general-purpose random walk Metropolis algorithm when the target has non-convex support $A \subset \mathbb{R}^d$, by reusing proposals in $A^c$ which would otherwise be rejected. The algorithm is Metropolis-class and under standard conditions the chain satisfies a strong law of large numbers and central limit theorem. Theoretical and numerical evidence of improved performance relative to random walk Metropolis are provided. Issues of implementation are discussed and numerical examples, including applications to global optimisation and rare event sampling, are presented.
翻译:我们的目标是,在目标非电流支持$A\subset\mathbb{R ⁇ d$的情况下,通过重新使用否则会被拒绝的A$c$提案,改进通用随机散行大都会算法的探索,该算法是大都会级,在标准条件下,链条符合大量和中央限制的强力定律。提供了相对于随机散行大都会的改进性能的理论和数字证据。讨论了实施问题,并提出了数字实例,包括应用全球优化和稀有事件抽样。