论文标题

社交网络中的多元关系聚集学习

Multivariate Relations Aggregation Learning in Social Networks

论文作者

Xu, Jin, Yu, Shuo, Sun, Ke, Ren, Jing, Lee, Ivan, Pan, Shirui, Xia, Feng

论文摘要

多元关系在各种类型的网络中都是一般的,例如生物网络,社交网络,运输网络和学术网络。由于三元封闭的原则和群体形成的趋势,社交网络中的多元关系是复杂而丰富的。因此,在社交网络的图形学习任务中,多元关系信息的识别和利用更为重要。现有的图形学习方法基于邻域信息扩散机制,这通常会导致部分遗漏甚至缺乏多元关系信息,并最终影响任务的准确性和执行效率。为了应对这些挑战,本文提出了多元关系聚合学习(更多)方法,该方法可以有效地捕获网络环境中的多元关系信息。通过汇总节点属性特征和结构特征,可以更高的准确性和更快的收敛速度。我们在一个引用网络和五个社交网络上进行了实验。实验结果表明,在节点分类任务中,模型的精度越高,其准确度高于GCN(图形卷积网络)模型,并且可以显着降低时间成本。

Multivariate relations are general in various types of networks, such as biological networks, social networks, transportation networks, and academic networks. Due to the principle of ternary closures and the trend of group formation, the multivariate relationships in social networks are complex and rich. Therefore, in graph learning tasks of social networks, the identification and utilization of multivariate relationship information are more important. Existing graph learning methods are based on the neighborhood information diffusion mechanism, which often leads to partial omission or even lack of multivariate relationship information, and ultimately affects the accuracy and execution efficiency of the task. To address these challenges, this paper proposes the multivariate relationship aggregation learning (MORE) method, which can effectively capture the multivariate relationship information in the network environment. By aggregating node attribute features and structural features, MORE achieves higher accuracy and faster convergence speed. We conducted experiments on one citation network and five social networks. The experimental results show that the MORE model has higher accuracy than the GCN (Graph Convolutional Network) model in node classification tasks, and can significantly reduce time cost.

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