RankMerging: a supervised learning-to-rank framework to predict links in large social networks
作者:Lionel Tabourier, Daniel F. Bernardes, Anne-Sophie Libert, Renaud Lambiotte
摘要
Uncovering unknown or missing links in social networks is a difficult task because of their sparsity and because links may represent different types of relationships, characterized by different structural patterns. In this paper, we define a simple yet efficient supervised learning-to-rank framework, called RankMerging, which aims at combining information provided by various unsupervised rankings. We illustrate our method on three different kinds of social networks and show that it substantially improves the performances of unsupervised methods of ranking as well as standard supervised combination strategies. We also describe various properties of RankMerging, such as its computational complexity, its robustness to feature selection and parameter estimation and discuss its area of relevance: the prediction of an adjustable number of links on large networks.
论文关键词:Link prediction, Social network analysis, Large networks, Learning to rank, Supervised learning
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10994-019-05792-4