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A framework for dynamic link prediction in heterogeneous networks

机译:异构网络中动态链接预测的框架

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Network and linked data have become quite prevalent in recent years because of the ubiquity of the web and social media applications, which are inherently network oriented. Such networks are massive, dynamic, contain a lot of content, and may evolve over time. In this paper, we will study the problem of efficient dynamic link inference in temporal and heterogeneous information networks. The problem of efficiently performing dynamic link inference is extremely challenging in massive and heterogeneous information network because of the challenges associated with the dynamic nature of the network, and the different types of nodes and attributes in it. Both the topology and type information need to be used effectively for the link inference process. We propose an effective two‐level scheme which makes efficient macro‐ and micro‐decisions for combining structure and content in a dynamic and time‐sensitive way. The time‐sensitive nature of the links is leveraged in order to perform effective link prediction. We will also study how to apply the method to the problem of community prediction. We illustrate the effectiveness of our technique over a number of real data sets..
机译:近年来,由于网络和社交媒体应用程序的普遍存在,网络和链接数据已变得十分普遍,而这些应用程序本来就是面向网络的。这样的网络是庞大的,动态的,包含很多内容,并且可能随着时间的推移而发展。在本文中,我们将研究时间和异构信息网络中有效的动态链接推理问题。由于与网络的动态性质以及网络中不同类型的节点和属性相关联的挑战,在大规模且异构的信息网络中有效执行动态链接推理的问题极具挑战性。拓扑和类型信息都需要有效地用于链接推断过程。我们提出了一个有效的两级方案,该方案为以动态和时间敏感的方式组合结构和内容做出了有效的宏观和微观决策。利用链接的时间敏感性来执行有效的链接预测。我们还将研究如何将该方法应用于社区预测问题。我们通过大量真实数据集说明了我们的技术的有效性。

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