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A randomized quasi-Monte Carlo simulation method for Markov chains

机译:马氏链的随机准蒙特卡罗模拟方法

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We introduce and study a randomized quasi-Monte Carlo method for the simulation of Markov chains up to a random (and possibly unbounded) stopping time. The method simulates n copies of the chain in parallel, using a (d + 1)-dimensional, highly uniform point set of cardinality n, randomized independently at each step, where d is the number of uniform random numbers required at each transition of the Markov chain. The general idea is to obtain a better approximation of the state distribution, at each step of the chain, than with standard Monte Carlo. The technique can be used in particular to obtain a low-variance unbiased estimator of the expected total cost when state-dependent costs are paid at each step. It is generally more effective when the state space has a natural order related to the cost function. We provide numerical illustrations where the variance reduction with respect to standard Monte Carlo is substantial. The variance can be reduced by factors of several thousands in some cases. We prove bounds on the convergence rate of the worst-case error and of the variance for special situations where the state space of the chain is a subset of the real numbers. In line with what is typically observed in randomized quasi-Monte Carlo contexts, our empirical results indicate much better convergence than what these bounds guarantee.
机译:我们引入并研究了一种随机准蒙特卡罗方法,用于模拟马尔可夫链直到随机(且可能是无界的)停止时间。该方法使用基数n的(d +1)维,高度均匀的点集并行模拟n个链的副本,并在每个步骤中将其独立随机化,其中d是在每次转换时所需的均匀随机数的数量马尔可夫链。总体思路是,与标准的蒙特卡洛方法相比,在链的每个步骤上都能获得更好的状态分布近似值。当在每个步骤中支付与状态有关的成本时,该技术尤其可以用于获得预期总成本的低方差无偏估计量。当状态空间具有与成本函数相关的自然顺序时,通常更有效。我们提供了数值插图,其中相对于标准蒙特卡洛的方差减小是可观的。在某些情况下,方差可以减少数千倍。对于链状态空间是实数子集的特殊情况,我们证明了最坏情况的误差和方差的收敛速度的界限。与在随机准蒙特卡洛环境中通常观察到的结果一致,我们的经验结果表明,收敛性比这些界限所保证的要好得多。

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