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Link Prediction in Multi-relational Collaboration Networks

机译:多关系协作网络中的链路预测

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Traditional link prediction techniques primarily focus on the effect of potential linkages on the local network neighborhood or the paths between nodes. In this paper, we study the problem of link prediction in networks where instances can simultaneously belong to multiple communities, engendering different types of collaborations. Links in these networks arise from heterogeneous causes, limiting the performance of predictors that treat all links homogeneously. To solve this problem, we introduce a new link prediction framework, Link Prediction using Social Features (LPSF), which weights the network using a similarity function based on features extracted from patterns of prominent interactions across the network.
机译:传统的链路预测技术主要集中在局部网络邻域或节点之间的路径上的潜在联系的影响。在本文中,我们研究了网络中可以同时属于多个社区的网络中的链路预测问题,从而参考不同类型的合作。这些网络中的链接出现来自异构原因,限制了均匀地处理所有链接的预测器的性能。为了解决这个问题,我们介绍了一种新的链路预测框架,使用社交特征(LPSF)的链路预测,该链接预测基于从网络上的突出交互模式中提取的特征使用相似性功能来重量网络。

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