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Layer-Wise Model Stacking for Link Prediction in Multilayer Networks. Case of Scientific Collaboration Networks

机译:多层网络中用于链路预测的明智模型堆叠。科学协作网络案例

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Despite the rise of multilayer networks and their applications for the real world systems, the problem of link prediction is still one of the toughest to address. In this paper, we investigate the problem of link prediction in the multilayer scientific collaboration network. Our proposed solution alters the classic stacking technique for the supervised link prediction in terms of distribution of the training and testing data according to the structure of a multilayer network with training number of models for each layer to predict link formation in a target network. Experimental results show that our approach has positive effect on the link predictions quality, nevertheless, the influence of non-target layers on the resulting prediction is moderately low.
机译:尽管多层网络及其在现实世界系统中的应用兴起,但是链路预测问题仍然是最难解决的问题之一。在本文中,我们研究了多层科学协作网络中的链接预测问题。我们提出的解决方案根据多层网络的结构在训练和测试数据的分布方面改变了用于监督链路预测的经典堆叠技术,并针对每一层模型进行了训练,以预测目标网络中的链路形成。实验结果表明,我们的方法对链路预测质量有积极影响,但是,非目标层对结果预测的影响较小。

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