Communities in social networks evolve over time as people enter and leave the network and their activity behaviors shift. The task of predicting structural changes in communities over time is known as community evolution prediction. Existing work in this area has focused on the development of frameworks for defining events while using traditional classification methods to perform the actual prediction. We present a novel graph neural network for predicting community evolution events from structural and temporal information. The model (GNAN) includes a group-node attention component which enables support for variable-sized inputs and learned representation of groups based on member and neighbor node features. A comparative evaluation with standard baseline methods is performed and we demonstrate that our model outperforms the baselines. Additionally, we show the effects of network trends on model performance.
翻译:随着人们进入和离开网络及其活动行为的变化,社会网络中的社区随时间变化而变化。预测社区结构变化的任务被称为社区演变预测。这一领域的现有工作侧重于制定确定事件的框架,同时使用传统的分类方法进行实际预测。我们提出了一个新颖的图形神经网络,从结构和时间信息中预测社区演变事件。模型(GNAN)包括一个群点关注部分,它能够支持基于成员和邻居节点特点的不同规模的投入和学习的团体代表性。进行了与标准基线方法的比较评估,我们证明我们的模型超过了基线。此外,我们展示了网络趋势对模型性能的影响。