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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Evolutionary Nonnegative Matrix Factorization Algorithms for Community Detection in Dynamic Networks
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Evolutionary Nonnegative Matrix Factorization Algorithms for Community Detection in Dynamic Networks

机译:动态网络社区检测的进化非负矩阵分解算法

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Discovering evolving communities in dynamic networks is essential to important applications such as analysis for dynamic web content and disease progression. Evolutionary clustering uses the temporal smoothness framework that simultaneously maximizes the clustering accuracy at the current time step and minimizes the clustering drift between two successive time steps. In this paper, we propose two evolutionary nonnegative matrix factorization (ENMF) frameworks for detecting dynamic communities. To address the theoretical relationship among evolutionary clustering algorithms, we first prove the equivalence relationship between ENMF and optimization of evolutionary modularity density. Then, we extend the theory by proving the equivalence between evolutionary spectral clustering and ENMF, which serves as the theoretical foundation for hybrid algorithms. Based on the equivalence, we propose a semi-supervised ENMF (sE-NMF) by incorporating a priori information into ENMF. Unlike the traditional semi-supervised algorithms, a priori information is integrated into the objective function of the algorithm. The main advantage of the proposed algorithm is to escape the local optimal solution without increasing time complexity. The experimental results over a number of artificial and real world dynamic networks illustrate that the proposed method is not only more accurate but also more robust than the state-of-the-art approaches.
机译:在动态网络中发现不断发展的社区对于重要应用至关重要,例如对动态Web内容和疾病进展进行分析。进化聚类使用时间平滑度框架,该框架同时使当前时间步的聚类精度最大化,并使两个连续时间步之间的聚类漂移最小化。在本文中,我们提出了两个用于检测动态社区的进化非负矩阵分解(ENMF)框架。为了解决进化聚类算法之间的理论关系,我们首先证明了ENMF与进化模块密度优化之间的等价关系。然后,我们通过证明进化谱聚类和ENMF之间的等价性来扩展理论,这为混合算法提供了理论基础。基于等效性,我们通过将先验信息合并到ENMF中,提出了一种半监督的ENMF(sE-NMF)。与传统的半监督算法不同,先验信息被集成到算法的目标函数中。所提出算法的主要优点是在不增加时间复杂度的情况下逃脱了局部最优解。在许多人工和现实世界的动态网络上的实验结果表明,与现有技术相比,该方法不仅更准确,而且更可靠。

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