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Activity-edge Centric Multi-label Classification for Mining Heterogeneous Information Networks

机译:挖掘异构信息网络的活动边缘中心多标签分类

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摘要

Multi-label classification of heterogeneous information networks has received renewed attention in social network analysis. In this paper, we present an activity-edge centric multi-label classification framework for analyzing heterogeneous information networks with three unique features. First, we model a heterogeneous information network in terms of a collaboration graph and multiple associated activity graphs. We introduce a novel concept of vertex-edge homophily in terms of both vertex labels and edge labels and transform a general collaboration graph into an activity- based collaboration multigraph by augmenting its edges with class labels from each activity graph through activity-based edge classification. Second, we utilize the label vicinity to capture the pairwise vertex closeness based on the labeling on the activity-based collaboration multigraph. We incorporate both the structure affinity and the label vicinity into a unified classifier to speed up the classification convergence. Third, we design an iterative learning algorithm, AEClass, to dynamically refine the classification result by continuously adjusting the weights on different activity-based edge classification schemes from multiple activity graphs, while constantly learning the contribution of the structure affinity and the label vicinity in the unified classifier. Extensive evaluation on real datasets demonstrates that AEClass outperforms existing representative methods in terms of both effectiveness and efficiency.
机译:异构信息网络的多标签分类在社交网络分析中受到了新的关注。在本文中,我们提出了一个以活动边缘为中心的多标签分类框架,用于分析具有三个独特功能的异构信息网络。首先,我们根据协作图和多个关联的活动图对异构信息网络进行建模。我们在顶点标签和边缘标签方面引入了顶点边缘同质性的新概念,并通过基于活动的边缘分类,通过使用每个活动图中的类标签增加其边缘,从而将通用协作图转换为基于活动的协作多图。其次,我们基于基于活动的协作多图上的标签,利用标签附近来捕获成对的顶点接近度。我们将结构亲和力和标签附近都纳入统一的分类器中,以加快分类收敛。第三,我们设计了一种迭代学习算法AEClass,通过从多个活动图连续调整不同基于活动的边缘分类方案的权重来动态地细化分类结果,同时不断学习结构亲和力和标签附近的贡献。统一分类器。对真实数据集的广泛评估表明,AEClass在有效性和效率方面都优于现有的代表性方法。

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