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首页> 外文期刊>LIPIcs : Leibniz International Proceedings in Informatics >Deterministic Algorithms for Maximum Matching on General Graphs in the Semi-Streaming Model
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Deterministic Algorithms for Maximum Matching on General Graphs in the Semi-Streaming Model

机译:半流模型中的通用图最大匹配的确定性算法

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We present an improved deterministic algorithm for Maximum Cardinality Matching on general graphs in the Semi-Streaming Model. In the Semi-Streaming Model, a graph is presented as a sequence of edges, and an algorithm must access the edges in the given sequence. It can only use O(n polylog n) space to perform computations, where n is the number of vertices of the graph. If the algorithm goes over the stream k times, it is called a k-pass algorithm. In this model, McGregor [McGregor, 2005] gave the currently best known randomized (1+epsilon)-approximation algorithm for maximum cardinality matching on general graphs, that uses (1/epsilon)^{O(1/epsilon)} passes. Ahn and Guha [Ahn and Guha, 2013] later gave the currently best known deterministic (1+epsilon)-approximation algorithms for maximum cardinality matching: one on bipartite graphs that uses O(log log(1/epsilon)/epsilon^2) passes, and the other on general graphs that uses O(log n *poly(1/epsilon)) passes (note that, for general graphs, the number of passes is dependent on the size of the input). We present the first deterministic algorithm that achieves a (1+epsilon)-approximation on general graphs in only a constant number ((1/epsilon)^{O(1/epsilon)}) of passes.
机译:我们提出了一种改进的确定性算法,用于半流模型中的一般图上的最大基数匹配。在半流模型中,图形以边的顺序表示,并且算法必须按给定的顺序访问边。它只能使用O(n polylog n)空间执行计算,其中n是图形的顶点数。如果该算法经过k次流,则称为k遍算法。在此模型中,McGregor [McGregor,2005]给出了当前最著名的随机(1 + epsilon)逼近算法,用于在一般图形上实现最大基数匹配,该算法使用(1 / epsilon)^ {O(1 / epsilon)}传递。 Ahn和Guha [Ahn和Guha,2013年]随后给出了目前最著名的确定性(1 + epsilon)近似算法,用于最大基数匹配:在二分图上使用O(log log(1 / epsilon)/ epsilon ^ 2)传递,以及其他使用O(log n * poly(1 / epsilon))传递的常规图(请注意,对于常规图,传递的次数取决于输入的大小)。我们提出了第一个确定性算法,该算法仅在恒定数量((1 / epsilon)^ {O(1 / epsilon)})的遍历中实现对一般图形的(1 + epsilon)逼近。

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