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A multilayered approach for link prediction in heterogeneous complex networks

机译:异构复杂网络中链路预测的多层方法

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Link prediction problem is a difficult task in complex networks due to (i) network size and sparsity, and (ii) extracting efficient similarity measures between node pairs. Although many link predictors have been proposed in the literatures, most of them are presented in homogeneous networks. The heterogeneity of node types adds a new challenge to link prediction problem. A meta-structure known as meta-path has been recently proposed to overcome the heterogeneity challenges. However, defining and generating good meta-paths as well as obtaining high prediction accuracy are still open issues. In this paper, a multilayered approach has been proposed in which a heterogeneous system is modeled as a multilayered complex network. Then, by exploring the network layers with different semantics, a set of meta-paths is generated. Extracting a number of topological features for each meta-path, a number of link predictors is learned which are aggregated to build the final link predictor. The experimental results on a bibliography network (DBLP) show that the proposed approach obtains higher accuracy in comparison with popular heterogeneous proximity measures. (C) 2016 Elsevier B.V. All rights reserved.
机译:由于(i)网络规模和稀疏性,以及(ii)提取节点对之间的有效相似性度量,链路预测问题是复杂网络中的一项艰巨任务。尽管在文献中已经提出了许多链接预测器,但是大多数链接预测器是在同构网络中呈现的。节点类型的异构性给链接预测问题增加了新的挑战。最近已经提出了一种称为元路径的元结构来克服异质性挑战。但是,定义和生成良好的元路径以及获得较高的预测精度仍是未解决的问题。在本文中,提出了一种多层方法,其中将异构系统建模为多层复杂网络。然后,通过探索具有不同语义的网络层,生成了一组元路径。为每个元路径提取许多拓扑特征,就学习了许多链接预测器,这些预测器被汇总以构建最终的链接预测器。在书目网络(DBLP)上的实验结果表明,与流行的异构接近测量相比,该方法获得了更高的准确性。 (C)2016 Elsevier B.V.保留所有权利。

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