Shifting niches for community structure detection

Corrado Grappiolo, J. Togelius, Georgios N. Yannakakis
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引用次数: 4

Abstract

We present a new evolutionary algorithm for community structure detection in both undirected and unweighted (sparse) graphs and fully connected weighted digraphs (complete networks). Previous investigations have found that, although evolutionary computation can identify community structure in complete networks, this approach seems to scale badly due to solutions with the wrong number of communities dominating the population. The new algorithm is based on a niching model, where separate compartments of the population contain candidate solutions with different numbers of communities. We experimentally compare the new algorithm to the well-known algorithms of Pizzuti and Tasgin, and find that we outperform those algorithms for sparse graphs under some conditions, and drastically outperform them on complete networks under all tested conditions.
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移动生态位用于社区结构检测
提出了一种新的无向无权(稀疏)图和全连接加权有向图(完全网络)中群体结构检测的进化算法。先前的研究发现,尽管进化计算可以识别完整网络中的社区结构,但由于解决方案中占主导地位的社区数量错误,这种方法似乎规模性很差。新的算法是基于一个小生境模型,其中人口的不同区域包含不同数量的社区的候选解决方案。我们将新算法与著名的Pizzuti和Tasgin算法进行了实验比较,发现我们在某些条件下优于那些稀疏图算法,并且在所有测试条件下都大大优于它们。
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