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Temporal relation co-clustering on directional social network and author-topic evolution

机译:定向社会网络与作者主题演化的时间关系聚类

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Analyzing three-way data has attracted a lot of attention recently because such data have intrinsic rich structures and naturally appear in many real-world applications. One typical type of three-way data is multiple two-way data/matrices with different time periods, for example, authors’ publication key terms and people’s email correspondence varying with the time. We propose to use the PARATUCKER model to analyze three-way data. The PARATUCKER model combines the axis capabilities of the Parafac model and the structural generality of the Tucker model and thus can be viewed as the combination of Tucker and Parafac. It does not require the symmetry of the data nor the same dimensionality of mode 1 and mode 2. However, no algorithms have been developed for fitting the PARATUCKER model, especially for obtaining non-negative solutions that are intuitive to understand and explain. In this paper, we propose TANPT: a three-way alternating non-negative algorithm to fit the PARATUCKER model. We apply the algorithm to temporal relation co-clustering on directional social network and author-topic evolution. Experiments on real-world datasets (DBLP and Enron Email datasets) demonstrate that our proposed algorithm achieves better clustering performance than other well-known methods and also discovers some interesting patterns.
机译:最近,分析三向数据引起了很多关注,因为此类数据具有内在的丰富结构,并且自然地出现在许多实际应用中。三向数据的一种典型类型是具有不同时间段的多个两向数据/矩阵,例如,作者的出版关键术语和人们的电子邮件通信随时间而变化。我们建议使用PARATUCKER模型来分析三向数据。 PARATUCKER模型结合了Parafac模型的轴功能和Tucker模型的结构通用性,因此可以视为Tucker和Parafac的组合。它不需要数据的对称性,也不需要模式1和模式2的相同维数。但是,尚未开发出用于拟合PARATUCKER模型的算法,尤其是用于获得直观和易于理解的非负解的算法。在本文中,我们提出了TANPT:一种三向交替非负算法,以拟合PARATUCKER模型。我们将该算法应用于定向社交网络上的时间关系聚类和作者主题演化。在实际数据集(DBLP和Enron Email数据集)上的实验表明,我们提出的算法比其他知名方法具有更好的聚类性能,并且发现了一些有趣的模式。

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