Temporal interaction networks are formed in many fields, e.g., e-commerce, online education, and social network service. Temporal interaction network embedding can effectively mine the information in temporal interaction networks, which is of great significance to the above fields. Usually, the occurrence of an interaction affects not only the nodes directly involved in the interaction (interacting nodes), but also the neighbor nodes of interacting nodes. However, existing temporal interaction network embedding methods only use historical interaction relations to mine neighbor nodes, ignoring other relation types. In this paper, we propose a multi-relation aware temporal interaction network embedding method (MRATE). Based on historical interactions, MRATE mines historical interaction relations, common interaction relations, and interaction sequence similarity relations to obtain the neighbor based embeddings of interacting nodes. The hierarchical multi-relation aware aggregation method in MRATE first employs graph attention networks (GATs) to aggregate the interaction impacts propagated through a same relation type and then combines the aggregated interaction impacts from multiple relation types through the self-attention mechanism. Experiments are conducted on three public temporal interaction network datasets, and the experimental results show the effectiveness of MRATE.
翻译:时间互动网络可以有效地将信息埋在时间互动网络中,这对于上述领域意义重大。通常,互动的发生不仅影响互动直接涉及的节点(交错节点),而且影响互动节点的相邻节点。但是,现有的时间互动网络嵌入方法只使用与矿区邻接节点的历史互动关系,而忽略其他关系类型。在本文件中,我们建议采用多关系意识时间互动网络嵌入方法(MRATE)。基于历史互动,MURATE 矿区历史互动关系、共同互动关系和互动序列相似关系,以获得以邻接为基础的互动节点嵌入。MURATE的分级多关系意识聚合方法首先使用图形关注网络(GATs)来汇总通过同一关系类型传播的互动影响,然后通过自我维护机制将多种关系类型的综合互动影响结合起来。对三个公共时间互动网络数据集进行了实验,实验结果显示MRATE的有效性。