Beyond Individuals: Modeling Mutual and Multiple Interactions for Inductive Link Prediction between Groups

Gong Yin, Xing Wang, Hongli Zhang, Chao Meng, Yuchen Yang, Kun Lu, Yi Luo
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Abstract

Link prediction is a core task in graph machine learning with wide applications. However, little attention has been paid to link prediction between two group entities. This limits the application of the current approaches to many real-life problems, such as predicting collaborations between academic groups or recommending bundles of items to group users. Moreover, groups are often ephemeral or emergent, forcing the predicting model to deal with challenging inductive scenes. To fill this gap, we develop a framework composed of a GNN-based encoder and neural-based aggregating networks, namely the Mutual Multi-view Attention Networks (MMAN). First, we adopt GNN-based encoders to model multiple interactions among members and groups through propagating. Then, we develop MMAN to aggregate members' node representations into multi-view group representations and compute the final results by pooling pairwise scores between views. Specifically, several view-guided attention modules are adopted when learning multi-view group representations, thus capturing diversified member weights and multifaceted group characteristics. In this way, MMAN can further mimic the mutual and multiple interactions between groups. We conduct experiments on three datasets, including two academic group link prediction datasets and one bundle-to-group recommendation dataset. The results demonstrate that the proposed approach can achieve superior performance on both tasks compared with plain GNN-based methods and other aggregating methods.
超越个体:为群体间的归纳链接预测建立相互和多重互动的模型
链接预测是图机学习中的一项核心任务,有着广泛的应用。然而,很少有人关注两组实体之间的关联预测。这限制了当前方法在许多现实问题中的应用,例如预测学术团体之间的协作或向团体用户推荐大量项目。此外,群体往往是短暂的或突发的,迫使预测模型处理具有挑战性的归纳场景。为了填补这一空白,我们开发了一个由基于gnn的编码器和基于神经的聚合网络组成的框架,即互多视图注意网络(MMAN)。首先,我们采用基于gnn的编码器,通过传播来模拟成员和组之间的多重交互。然后,我们开发了MMAN,将成员的节点表示聚合成多视图组表示,并通过池化视图之间的两两得分来计算最终结果。具体来说,在学习多视图群体表征时采用了多个视图引导的注意模块,从而捕捉到多样化的成员权重和多面性的群体特征。通过这种方式,MMAN可以进一步模拟组间的相互和多重交互。我们在三个数据集上进行了实验,包括两个学术组链接预测数据集和一个捆绑到组推荐数据集。结果表明,与基于普通gnn的方法和其他聚合方法相比,该方法在这两个任务上都取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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