首页> 外文会议>International Conference on Neural Networks and Soft Computing; 20020611-15; Zakopane(PL) >Solving Stochastic Shortest Path Problem Using Monte Carlo Sampling Method: A Distributed Learning Automata Approach
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Solving Stochastic Shortest Path Problem Using Monte Carlo Sampling Method: A Distributed Learning Automata Approach

机译:使用蒙特卡洛抽样方法解决随机最短路径问题:一种分布式学习自动机方法

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In this paper, we introduce a Monte Carlo simulation method based on distributed learning automata (DLA) for solving the stochastic shortest path problem. We give an iterative stochastic algorithm that finds the minimum expected value of set of random variables representing cost of paths in a stochastic graph by taking sufficient samples from them. In the given algorithm, the sample size is determined dynamically as the algorithm proceeds. It is shown that when the total sample size tends to infinity, the proposed algorithm finds the shortest path. In this algorithm, at each instant, DLA determine which edges to be sampled. This reduces the unnecessary sampling from the edges which don't seem to be on the shortest path and thus reduces the overall sampling size. A new method of proof (different from [2,3]) is used to prove the convergence of the proposed algorithm. The simulations conducted confirm the theory.
机译:在本文中,我们介绍了一种基于分布式学习自动机(DLA)的蒙特卡洛模拟方法,用于解决随机最短路径问题。我们提供了一种迭代随机算法,该算法通过从随机变量中获取足够的样本来找到表示随机图中路径成本的随机变量集的最小期望值。在给定算法中,随着算法的进行,动态确定样本大小。结果表明,当总样本量趋于无穷大时,该算法找到了最短路径。在此算法中,DLA在每个瞬间确定要采样的边缘。这减少了似乎不在最短路径上的边缘上不必要的采样,从而减小了总体采样大小。一种新的证明方法(不同于[2,3])用于证明所提出算法的收敛性。进行的仿真证实了这一理论。

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