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Relationship Prediction in Dynamic Heterogeneous Information Networks

机译:动态异构信息网络中的关系预测

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Most real-world information networks, such as social networks, are heterogeneous and as such, relationships in these networks can be of different types and hence carry differing semantics. Therefore techniques for link prediction in homogeneous networks cannot be directly applied on heterogeneous ones. On the other hand, works that investigate link prediction in heterogeneous networks do not necessarily consider network dynamism in sequential time intervals. In this work we propose a technique that leverages a combination of latent and topological features to predict a target relationship between two nodes in a dynamic heterogeneous information network. Our technique, called MetaDynaMix, effectively combines meta path-based topology features and inferred latent features that incorporate temporal network changes in order to capture network (1) heterogeneity and (2) temporal evolution, when making link predictions. Our experiment results on two real-world datasets show statistically significant improvement over AUCROC and prediction accuracy compared to the state of the art techniques.
机译:大多数现实世界的信息网络(例如社交网络)是异构的,因此,这些网络中的关系可以具有不同的类型,因此具有不同的语义。因此,用于同构网络中的链路预测的技术不能直接应用于异构网络。另一方面,研究异构网络中的链接预测的工作不一定要考虑连续时间间隔中的网络动态性。在这项工作中,我们提出了一种技术,该技术利用潜在和拓扑特征的组合来预测动态异构信息网络中两个节点之间的目标关系。我们的技术称为MetaDynaMix,有效地结合了基于元路径的拓扑特征和推断的潜在特征,这些特征结合了时态网络的变化,以便在进行链路预测时捕获网络(1)异质性和(2)时间演化。我们在两个真实数据集上的实验结果显示,与最新技术相比,AUCROC在统计上显着改善,并且预测精度更高。

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