HOPLP − MUL: link prediction in multiplex networks based on higher order paths and layer fusion

被引:0
作者
Shivansh Mishra
Shashank Sheshar Singh
Ajay Kumar
Bhaskar Biswas
机构
[1] Indian Institute of Technology (BHU),Department of Computer Science and Engineering
[2] Thapar Institute of Engineering and Technology,Department of Computer Science and Engineering
[3] Bennett University,Department of Computer Science and Engineering
来源
Applied Intelligence | 2023年 / 53卷
关键词
Link prediction; Multiplex networks; Complex networks; Higher-order paths;
D O I
暂无
中图分类号
学科分类号
摘要
Multiple kinds of connections (links) may be encoded into distinct layers in multiplex networks, with each layer representing a particular type of link. Even if the type of linkages in various layers varies, the nodes themselves, as well as their underlying relationships, are retained. Considering the combined structure of all the layers, we achieve a complete overview of the network, which is impossible to achieve using any single layer itself. In this work, we theorize that this summarized graph (overview) provides us with an opportunity to determine the regional influence of nodes to greater certainty, and we can exploit this for more accurate link prediction. To begin, we use an aggregation model that combines information from many layers into a single summary weighted static network while accounting for the relative density of the layers. Then, we propose an algorithm HOPLP − MUL which iteratively calculates link likelihoods taking longer paths between nodes into account. We also incorporate the concept of layer ranking based on densities as well as the dampening effect of longer paths on information flow. We compare our technique (HOPLP − MUL) to stae-of-the-art multiplex link prediction algorithms, and the results show that it outperforms them both on the summarised weighted graph as well as the original layers.
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页码:3415 / 3443
页数:28
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