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Labeling Actors in Social Networks Using a Heterogeneous Graph Kernel

机译:使用异构图形内核在社交网络中标记角色

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We consider the problem of labeling actors in social networks where the labels correspond to membership in specific interest groups, or other attributes of the actors. Actors in a social network are linked to not only other actors but also items (e.g., video and photo) which in turn can be linked to other items or actors. Given a social network in which only some of the actors are labeled, our goal is to predict the labels of the remaining actors. We introduce a variant of the random walk graph kernel to deal with the heterogeneous nature of the network (i.e., presence of a large number of node and link types). We show that the resulting heterogeneous graph kernel (HGK) can be used to build accurate classifiers for labeling actors in social networks. Specifically, we describe results of experiments on two real-world data sets that show HGK classifiers often significantly outperform or are competitive with the state-of-the-art methods for labeling actors in social networks.
机译:我们考虑在社交网络中标记参与者的问题,其中标记对应于特定兴趣组的成员身份或参与者的其他属性。社交网络中的演员不仅链接到其他演员,而且链接到项目(例如,视频和照片),这些项目又可以链接到其他项目或演员。在仅标记了一些演员的社交网络的情况下,我们的目标是预测其余演员的标签。我们介绍了随机游动图内核的一种变体,以处理网络的异构性质(即存在大量节点和链接类型)。我们证明了生成的异构图内核(HGK)可用于构建用于在社交网络中标记参与者的准确分类器。具体而言,我们在两个真实世界的数据集上描述了实验结果,这些结果表明HGK分类器通常明显优于社交网络中标记参与者的最新方法,或者与最新方法相竞争。

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