The problem of sampling constrained continuous distributions has frequently appeared in many machine/statistical learning models. Many Monte Carlo Markov Chain (MCMC) sampling methods have been adapted to handle different types of constraints on the random variables. Among these methods, Hamilton Monte Carlo (HMC) and the related approaches have shown significant advantages in terms of computational efficiency compared to other counterparts. In this article, we first review HMC and some extended sampling methods, and then we concretely explain three constrained HMC-based sampling methods, reflection, reformulation, and spherical HMC. For illustration, we apply these methods to solve three well-known constrained sampling problems, truncated multivariate normal distributions, Bayesian regularized regression, and nonparametric density estimation. In this review, we also connect constrained sampling with another similar problem in the statistical design of experiments of constrained design space.
翻译:在许多机算/统计学习模式中经常出现抽样限制连续分布的问题,许多蒙特卡洛·马尔科夫链(MCMC)取样方法经过调整,以处理随机变量的不同限制类型,其中汉密尔顿·蒙特卡洛(HMC)及相关方法在计算效率方面与其他对应方法相比显示出很大的优势,在本条中,我们首先审查HMC和一些扩大的取样方法,然后具体解释三种以HMC为基础的受限制的取样方法:反射、重新拟订和球体HMC。例如,我们运用这些方法解决三个众所周知的受限制的抽样问题、多变异正常分布、贝叶西亚常规回归和非对称密度估计。在本次审查中,我们还将受限采样与受限设计空间实验的统计设计中的另一个类似问题联系起来。