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CSIP: Enhanced Link Prediction with Context of Social Influence Propagation

机译:CSIP:增强了与社会影响广播背景的链路预测

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Data mining in social networks brings an indispensable role for the construction of smart cities from the perspective of social development. Link prediction is an important task of data mining, especially in the knowledge graph, which is also called knowledge graph completion. Link prediction aims to find missing links or predict potential links according to the current social network. The most existing link prediction methods focus on static information in social networks, such as topology and node attributes, which are partly provided by users. When users are unwilling to provide or intentionally hide these static features, traditional link prediction methods cannot achieve ideal performance. The dynamic information of social influence propagation in social networks can avoid the user's subjective impact and better reflect the relationship between users. In addition, users show different degrees of interest and authority on various topics in the real world, leading to different influence propagation patterns. Therefore, we use context of social influence to optimize the topic-aware influence propagation model to improve the performance of link prediction. In this paper, we propose a new multi-output graph neural network framework to capture influence propagation in social networks and model the influence of users in different roles. In this way, the underlying information of influence between users can be used to construct new features to improve the performance of link prediction. Our experiments conduct the method on multiple benchmark datasets. The experimental results show that the modeling of context is effective, and our model outperforms the compared state-of-the-art link prediction methods. (C) 2021 Elsevier Inc. All rights reserved.
机译:社交网络中的数据挖掘为从社会发展的角度来说,为智能城市建设产生了不可或缺的作用。链路预测是数据挖掘的重要任务,特别是在知识图中,这也被称为知识图完成。链路预测旨在根据当前的社交网络找到缺失的链接或预测潜在链接。最现有的链接预测方法侧重于社交网络中的静态信息,例如拓扑和节点属性,这些数据由用户部分提供。当用户不愿意提供或有意隐藏这些静态功能时,传统的链路预测方法无法实现理想的性能。社交网络中社会影响传播的动态信息可以避免用户的主观影响,更好地反映用户之间的关系。此外,用户表明了在现实世界中各种主题的不同兴趣和权威,导致不同影响传播模式。因此,我们使用社会影响的背景来优化主题感知的影响传播模型,以提高链路预测的性能。在本文中,我们提出了一种新的多输出图神经网络框架,以捕获社交网络中的影响传播,并模拟用户在不同角色中的影响。以这种方式,用户之间的影响的基础信息可用于构造新的特征以提高链路预测性能。我们的实验在多个基准数据集中进行该方法。实验结果表明,上下文的建模是有效的,我们的模型优于比较的最先进的链接预测方法。 (c)2021 Elsevier Inc.保留所有权利。

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