Network representation learning aims to generate an embedding for each node in a network, which facilitates downstream machine learning tasks such as node classification and link prediction. Current work mainly focuses on transductive network representation learning, i.e. generating fixed node embeddings, which is not suitable for real-world applications. Therefore, we propose a new inductive network representation learning method called MNCI by mining neighborhood and community influences in temporal networks. We propose an aggregator function that integrates neighborhood influence with community influence to generate node embeddings at any time. We conduct extensive experiments on several real-world datasets and compare MNCI with several state-of-the-art baseline methods on various tasks, including node classification and network visualization. The experimental results show that MNCI achieves better performance than baselines.
翻译:网络代表性学习旨在为每个节点在网络中植入一个嵌入装置,从而便利下游机器学习任务,例如节点分类和链接预测; 目前的工作主要侧重于传输网络代表性学习,即建立固定节点嵌入,这不适合现实世界的应用; 因此,我们建议采用一种新的带式网络代表学习方法,即采矿区区和时间网络中社区影响MNCI; 我们提议了一个聚合功能,将社区影响与社区影响结合起来,以便随时产生节点嵌入; 我们对几个真实世界数据集进行广泛的实验,并将MNCI与包括节点分类和网络可视化在内的若干最先进的各种任务基准方法进行比较。 实验结果显示,MNCI取得了比基线更好的业绩。