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Combinatorial network abstraction by trees and distances

机译:树木和距离对组合网络的抽象

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We draw attention to combinatorial network abstraction problems. These are specified by a class P of pattern graphs and a real-valued similarity measure q that is based on certain graph properties. For a fixed pattern P and similarity measure q, the optimization task on a given graph G is to find a subgraph G' ∈G which belongs to P and minimizes q(G, G'). In this work, we consider this problem for the natural and somewhat general case of trees and distance-based similarity measures. In particular, we systematically study spanning trees of graphs that minimize distances, approximate distances, and approximate closeness-centrality with respect to standard vector- and matrix-norms. Complexity analysis within a unifying framework shows that all considered variants of the problem are NP-complete, except for the case of distance-minimization with respect to the norm L{sub}∞. If a subset of edges can be "forced" into the spanning tree, no polynomial-time constant-factor approximation algorithmexists for the distance-approximation problems unless P = NP.
机译:我们提请注意组合网络抽象问题。这些由模式图的P类和基于某些图属性的实值相似性度量q来指定。对于固定模式P和相似度q,给定图G的优化任务是找到属于P的子图G'∈G并使q(G,G')最小。在这项工作中,我们针对树木的自然情况和基于距离的相似性度量来考虑这个问题。特别是,我们系统地研究了图的生成树,这些图相对于标准矢量和矩阵范数最小化了距离,近似距离和近似紧密度。在统一框架内进行的复杂性分析表明,除了相对于范数L {sub}∞的距离最小化的情况外,所有考虑的问题变体都是NP完全的。如果可以将边缘的一个子集“强制”到生成树中,则除非P = NP,否则对于距离近似问题不存在多项式时间常数因子近似算法。

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