Fast Augmenting Paths By Random Sampling From Residual Graphs

SIAM Journal on Computing(2015)

引用 18|浏览45
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摘要
Consider an n-vertex, m-edge, undirected graph with integral capacities and maxflow value v. We give a new (O) over tilde (m + nv)-time maximum flow algorithm. After assigning certain special sampling probabilities to edges in (O) over tilde (m) time, our algorithm is very simple: repeatedly find an augmenting path in a random sample of edges from the residual graph. Breaking from past work, we demonstrate that we can benefit by random sampling from directed (residual) graphs. We also slightly improve an algorithm for approximating flows of arbitrary value, finding a flow of value (1-epsilon) times the maximum in (O) over tilde (m root n/epsilon) time.
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关键词
minimum cut,maximum flow random graph,random sampling,connectivity,cut enumeration,network reliability
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