Titsias Michalis K, Yau Christopher
Department of Informatics, Athens University of Economics and Business, Athens, Greece.
Wellcome Trust Centre for Human Genetics, University of Oxford, Oxford, United Kingdom.
J Am Stat Assoc. 2017 Sep 3;112(520):1598-1611. doi: 10.1080/01621459.2016.1222288. eCollection 2017.
We introduce the Hamming ball sampler, a novel Markov chain Monte Carlo algorithm, for efficient inference in statistical models involving high-dimensional discrete state spaces. The sampling scheme uses an auxiliary variable construction that adaptively truncates the model space allowing iterative exploration of the full model space. The approach generalizes conventional Gibbs sampling schemes for discrete spaces and provides an intuitive means for user-controlled balance between statistical efficiency and computational tractability. We illustrate the generic utility of our sampling algorithm through application to a range of statistical models. Supplementary materials for this article are available online.
我们引入了汉明球采样器,这是一种新颖的马尔可夫链蒙特卡罗算法,用于在涉及高维离散状态空间的统计模型中进行高效推理。该采样方案采用辅助变量构造,可自适应地截断模型空间,从而允许对整个模型空间进行迭代探索。该方法推广了离散空间的传统吉布斯采样方案,并为用户控制统计效率和计算易处理性之间的平衡提供了一种直观的方法。我们通过将采样算法应用于一系列统计模型来说明其通用效用。本文的补充材料可在线获取。