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A Random Network Ensemble Model Based Generalized Network Community Mining Algorithm

机译:基于随机网络集成模型的广义网络社区挖掘算法

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The ability to discover community structures from explorative networks is useful for many applications. Most of the existing methods with regard to community mining are specifically designed for assortative networks, and some of them could be applied to address disassortative networks by means of intentionally modifying the objectives to be optimized. However, the types of the explorative networks are unknown beforehand. Consequently, it is difficult to determine what specific algorithms should be used to mine appropriate structures from exploratory networks. To address this issue, a novel concept, generalized community structure, has been proposed with the attempt to unify the two distinct counterparts in both types of networks. Furthermore, based on the proposed random network ensemble model, a generalized community mining algorithm, so called G-NCMA, has been proposed, which is promisingly suitable for both types of networks. Its performance has been rigorously tested, validated and compared with other related algorithms against real-world networks as well as synthetic networks. Experimental results show the G-NCMA algorithm is able to detect communities, without any prior, from explorative networks with a good accuracy.
机译:从探索性网络发现社区结构的能力对于许多应用程序很有用。有关社区挖掘的大多数现有方法都是专门为分类网络设计的,其中一些方法可通过有意修改要优化的目标而应用于解决分类网络。但是,探索性网络的类型事先未知。因此,很难确定应使用哪种特定算法从探索性网络中挖掘适当的结构。为了解决这个问题,已经提出了一种新颖的概念,即通用的社区结构,试图统一两种类型的网络中的两个截然不同的对应对象。此外,基于提出的随机网络集成模型,提出了一种通用的社区挖掘算法,即G-NCMA,有望适用于两种类型的网络。它的性能已经针对实际网络和合成网络进行了严格的测试,验证并与其他相关算法进行了比较。实验结果表明,G-NCMA算法能够以较高的准确性从探索性网络中检测出社区,而没有任何先验。

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