A Monte Carlo Sampling Plan for Estimating Network Reliability
Author(s) -
George S. Fishman
Publication year - 1986
Publication title -
operations research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.797
H-Index - 140
eISSN - 1526-5463
pISSN - 0030-364X
DOI - 10.1287/opre.34.4.581
Subject(s) - monte carlo method , variance reduction , estimator , importance sampling , monte carlo integration , variance (accounting) , computer science , control variates , sampling (signal processing) , mathematics , node (physics) , statistics , upper and lower bounds , mathematical optimization , algorithm , hybrid monte carlo , markov chain monte carlo , mathematical analysis , accounting , structural engineering , filter (signal processing) , business , computer vision , engineering
For an undirected network G = V, E whose arcs are subject to random failure, we present a relatively complete and comprehensive description of a general class of Monte Carlo sampling plans for estimating g = gs, T, the probability that a specified node s is connected to all nodes in a node set T. We also provide procedures for implementing these plans. Each plan uses known lower and upper bounds [B, A] on g to produce an estimator of g that has a smaller variance A-gg-B/K on K independent replications than that obtained for crude Monte Carlo sampling B = 0, A = 1. We describe worst-case bounds on sample sizes K, in terms of B and A, for meeting absolute and relative error criteria. We also give the worst-case bound on the amount of variance reduction that can be expected when compared with crude Monte Carlo sampling. Two plans arc studied in detail for the case T = {t}. An example illustrates the variance reductions achievable with these plans. We also show how to assess the credibility that a specified error criterion for g is met as the Monte Carlo experiment progresses, and show how confidence intervals can be computed for g. Lastly, we summarize the steps needed to implement the proposed technique.
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