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Supervised ranking framework for relationship prediction in heterogeneous information networks

机译:异构信息网络中关系预测的监督排名框架

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摘要

In recent years, relationship prediction in heterogeneous information networks (HINs) has become an active topic. The most essential part of this task is how to effectively represent and utilize the important three kinds of information hidden in connections of the network, namely local structure information (Local-info), global structure information (Global-info) and attribute information (Attr-info). Although all the information indicates different features of the network and influence relationship creation in a complementary way, existing approaches utilize them separately or in a partially combined way. In this article, a novel framework named Supervised Ranking framework (S-Rank) is proposed to tackle this issue. To avoid the class imbalance problem, in S-Rank framework we treat the relationship prediction problem as a ranking task and divide it into three phases. Firstly, a Supervised PageRank strategy (SPR) is proposed to rank the candidate nodes according to Global-info and Attr-info. Secondly, a Meta Path-based Ranking method (MPR) utilizing Local-info is proposed to rank the candidate nodes based on their meta path-based features. Finally, the two ranking scores are linearly integrated into the final ranking result which combines all the Attr-info, Global-info and Local-info together. Experiments on DBLP data demonstrate that the proposed S-Rank framework can effectively take advantage of all the three kinds of information for relationship prediction over HINs and outperforms other well-known baseline approaches.
机译:近年来,异构信息网络(HIN)的关系预测已成为一个活动主题。此任务最重要的部分是如何有效地表示和利用隐藏在网络连接中的重要三种信息,即本地结构信息(本地信息),全局结构信息(全局 - 信息)和属性信息(attr -信息)。尽管所有信息都表明了网络的不同特征,并且以互补的方式影响建立关系,现有方法单独使用它们或以部分组合的方式使用它们。在本文中,建议提出了一个名为监督排名框架(S-ange)的小说框架来解决这个问题。为了避免级别的不平衡问题,在S-rank框架中,我们将关系预测问题视为排名任务,并将其分成三个阶段。首先,提出了一种监督的PageRank策略(SPR)来根据全球信息和attr-info对候选节点进行排名。其次,建议利用本地信息的基于元路径的排名方法(MPR)基于基于元路径的特征对候选节点进行排序。最后,两个排名分数是线性集成到最终排名结果中,将所有attri-info,全局信息和本地信息组合在一起。 DBLP数据的实验表明,所提出的S-Rank框架可以有效利用所有三种信息,以满足何种关系预测,并且优于其他众所周知的基线方法。

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