We consider a routing policy that forms a dynamic shortest path in a network with independent, positive and discrete random arc costs. When visiting a node in the network, the costs for the arcs going out of this node are realized, and then the policy will determine which node to visit next with the
State space partitioning methods for stochastic shortest path problems
โ Scribed by Alexopoulos, Christos
- Publisher
- John Wiley and Sons
- Year
- 1997
- Tongue
- English
- Weight
- 150 KB
- Volume
- 30
- Category
- Article
- ISSN
- 0028-3045
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โฆ Synopsis
This paper describes methods for computing measures related to shortest paths in networks with discrete random arc lengths. These measures include the probability that there exists a path with length not exceeding a specified value and the probability that a given path is shortest. The proposed methods are based on an iterative partition of the network state space and provide bounds that improve after each iteration and eventually become equal to the respective measure. These bounds can also be used for constructing simple variance reducing Monte Carlo sampling plans, making the proposed algorithms useful for large problems where exact evaluations are virtually impossible. The algorithms can be easily modified to compute performance characteristics in stochastic activity networks. Computational experience has been encouraging as we have been able to solve networks that have presented difficulties to existing methods.
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We investigated state space partition methods for computing probability measures related to the operation of stochastic systems and present new theoretical results concerning their efficiency. These methods iteratively partition the system state space, producing at each step progressively tighter bo