网络母题发现策略

P. Ribeiro, Fernando M A Silva, Marcus Kaiser
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引用次数: 65

摘要

来自生物学或社会学等领域的复杂网络存在于许多e-Science数据集中。处理网络通常会形成工作流瓶颈,因为一些相关算法的计算难度很大。一个例子是检测特征模式或“网络主题”——一个涉及子图挖掘和图同构的问题。本文对该领域目前的基序检测算法进行了综述和运行时比较。我们提出的策略和相应的算法在伪代码产生一个框架进行比较。我们对这些算法进行了分类,概述了每种策略的主要区别和优点。最后,我们在一个共同的平台上实现所有策略,以便使用一组基准网络进行公平客观的效率比较。我们希望为策略的选择提供信息,并批判性地讨论基序检测的未来改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strategies for Network Motifs Discovery
Complex networks from domains like Biology or Sociology are present in many e-Science data sets. Dealing with networks can often form a workflow bottleneck as several related algorithms are computationally hard. One example is detecting characteristic patterns or "network motifs" - a problem involving subgraph mining and graph isomorphism. This paper provides a review and runtime comparison of current motif detection algorithms in the field. We present the strategies and the corresponding algorithms in pseudo-code yielding a framework for comparison. We categorize the algorithms outlining the main differences and advantages of each strategy. We finally implement all strategies in a common platform to allow a fair and objective efficiency comparison using a set of benchmark networks. We hope to inform the choice of strategy and critically discuss future improvements in motif detection.
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