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Computing the Stationary Distribution, Locally

机译:在本地计算固定分布

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Computing the stationary distribution of a large finite or countably infinite state space Markov Chain (MC) has become central in many problems such as statistical inference and network analysis. Standard methods involve large matrix multiplications as in power iteration, or simulations of long random walks, as in Markov Chain Monte Carlo (MCMC). Power iteration is costly, as it involves computation at every state. For MCMC, it is difficult to determine whether the random walks are long enough to guarantee convergence. In this paper, we provide a novel algorithm that answers whether a chosen state in a MC has stationary probability larger than some Δ ∈ (0,1), and outputs an estimate of the stationary probability. Our algorithm is constant time, using information from a local neighborhood of the state on the graph induced by the MC, which has constant size relative to the state space. The multiplicative error of the estimate is upper bounded by a function of the mixing properties of the MC. Simulation results show MCs for which this method gives tight estimates.
机译:计算大型有限或可无限的无限状态空间马尔可夫链(MC)的静止分布在许多问题中已经成为诸如统计推断和网络分析的许多问题中。标准方法涉及大量矩阵乘法,或者在Markov Chain Monte Carlo(MCMC)中的长随机播放的模拟。功率迭代成本高昂,因为它涉及每个状态的计算。对于MCMC,很难确定随机散步是否足够长以保证收敛。在本文中,我们提供了一种新颖算法,其答案MC中的所选状态是否具有大于一些ΔΣ(0,1)的静止概率,并输出静止概率的估计。我们的算法是恒定的时间,使用来自MC引起的图表上的局部局部邻域的信息,该信息具有相对于状态空间的恒定大小。估计的乘法误差是通过MC的混合特性的函数的上限。仿真结果表明,该方法提供紧密估算的MCS。

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