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Detecting community structure by belonging intensity analysis of intermediate nodes

机译:中间节点的强度分析检测社区结构

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摘要

Community structure is a common characteristic of complex networks and community detection is an important methodology to reveal the structure of real-world networks. In recent years, many algorithms have been proposed to detect the high-quality communities in real-world networks. However, these algorithms have shortcomings of performing calculation on the whole network or defining objective function and the number of commonties in advance, which affects the performance and complexity of community detection algorithms. In this paper, a novel algorithm has been proposed to detect communities in networks by belonging intensity analysis of intermediate nodes, named BIAS, which is inspired from the interactive behavior in human communication networks. More specifically, intermediate nodes are middlemen between different groups in social networks. BIAS algorithm defines belonging intensity using local interactions and metrics between nodes, and the belonging intensity of intermediate node in different communities is analyzed to distinguish which community the intermediate node belongs to. The experiments of our algorithm with other state-of-the-art algorithms on synthetic networks and real-world networks have shown that BIAS algorithm has better accuracy and can significantly improve the quality of community detection without prior information.
机译:社区结构是复杂网络和社区检测的共同特征,是揭示现实网络结构的重要方法。近年来,已经提出了许多算法来检测现实网络中的高质量社区。然而,这些算法具有在整个网络上执行计算的缺点,或者预先定义客观函数和通信数量,这影响了社区检测算法的性能和复杂性。在本文中,已经提出了一种新颖的算法来通过归属于中间节点的强度分析来检测网络中的社区,命名偏差,这是从人类通信网络中的交互式行为启发。更具体地,中间节点是社交网络中不同组之间的中间商。偏差算法使用局部交互和节点之间的度量来定义属于强度,并且分析了不同社区中的中间节点的归属强度以区分中间节点所属的社区。我们对合成网络和实际网络的其他最先进算法的算法的实验表明,偏置算法具有更好的准确性,并且可以显着提高社区检测的质量而无需先前信息。

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