马尔可夫链
蒙特卡罗方法
哈密顿量(控制论)
马尔科夫蒙特卡洛
混合蒙特卡罗
离散化
计算
统计物理学
平行回火
哈密顿力学
计算机科学
应用数学
数学
数学优化
算法
物理
数学分析
相空间
统计
机器学习
热力学
作者
Steve Brooks,Andrew Gelman,Galin L. Jones,Xiao-Li Meng
出处
期刊:Chapman and Hall/CRC eBooks
[Informa]
日期:2011-05-10
被引量:1288
摘要
Hamiltonian dynamics can be used to produce distant proposals for the Metropolis algorithm, thereby avoiding the slow exploration of the state space that results from the diffusive behaviour of simple random-walk proposals. Though originating in physics, Hamiltonian dynamics can be applied to most problems with continuous state spaces by simply introducing fictitious "momentum" variables. A key to its usefulness is that Hamiltonian dynamics preserves volume, and its trajectories can thus be used to define complex mappings without the need to account for a hard-to-compute Jacobian factor - a property that can be exactly maintained even when the dynamics is approximated by discretizing time. In this review, I discuss theoretical and practical aspects of Hamiltonian Monte Carlo, and present some of its variations, including using windows of states for deciding on acceptance or rejection, computing trajectories using fast approximations, tempering during the course of a trajectory to handle isolated modes, and short-cut methods that prevent useless trajectories from taking much computation time.
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