We prove finite sample complexities for sequential Monte Carlo (SMC) algorithms which require only local mixing times of the associated Markov kernels. Our bounds are particularly useful when the target distribution is multimodal and global mixing of the Markov kernel is slow; in such cases our approach establishes the benefits of SMC over the corresponding Markov chain Monte Carlo (MCMC) estimator. The lack of global mixing is addressed by sequentially controlling the bias introduced by SMC resampling procedures. We apply these results to obtain complexity bounds for approximating expectations under mixtures of log-concave distributions and show that SMC provides a fully polynomial time randomized approximation scheme for some difficult multimodal problems where the corresponding Markov chain sampler is exponentially slow. Finally, we compare the bounds obtained by our approach to existing bounds for tempered Markov chains on the same problems.
翻译:我们证明了连续的蒙特卡洛(SMC)算法的有限抽样复杂性,这些算法只要求相关的Markov内核的本地混合时间。当目标分布是多式联运,而Markov内核的全球混合速度缓慢时,我们的界限特别有用;在这种情况下,我们的方法确定SMC对相应的Markov连锁蒙特卡洛(MCMC)测算器的好处。缺乏全球混合是通过连续控制SMC抽查程序所引入的偏差来解决的。我们应用这些结果来获得复杂界限,以适应对日志-concave 分布的混合物的预期,并表明SMC为某些困难的多式联运问题提供了完全的多元时间随机近似方案,而相应的Markov链取样器则在这种情况下速度极慢。最后,我们比较了我们采用的方法所获得的界限与对同一问题的温和的Markov链的现有界限。