Direction-Aware User Recommendation Based on Asymmetric Network Embedding

Sheng Zhou, Xin Wang, M. Ester, Bolang Li, Chen Ye, Zhen Zhang, Can Wang, Jiajun Bu
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引用次数: 5

Abstract

User recommendation aims at recommending users with potential interests in the social network. Previous works have mainly focused on the undirected social networks with symmetric relationship such as friendship, whereas recent advances have been made on the asymmetric relationship such as the following and followed by relationship. Among the few existing direction-aware user recommendation methods, the random walk strategy has been widely adopted to extract the asymmetric proximity between users. However, according to our analysis on real-world directed social networks, we argue that the asymmetric proximity captured by existing random walk based methods are insufficient due to the inbalance in-degree and out-degree of nodes. To tackle this challenge, we propose InfoWalk, a novel informative walk strategy to efficiently capture the asymmetric proximity solely based on random walks. By transferring the direction information into the weights of each step, InfoWalk is able to overcome the limitation of edges while simultaneously maintain both the direction and proximity. Based on the asymmetric proximity captured by InfoWalk, we further propose the qualitative (DNE-L) and quantitative (DNE-T) directed network embedding methods, capable of preserving the two properties in the embedding space. Extensive experiments conducted on six real-world benchmark datasets demonstrate the superiority of the proposed DNE model over several state-of-the-art approaches in various tasks.
基于非对称网络嵌入的方向感知用户推荐
用户推荐的目的是推荐社交网络中有潜在兴趣的用户。以往的研究主要集中在具有对称关系的无向社交网络上,如友谊,而最近的研究进展主要集中在不对称关系上,如跟随关系和跟随关系。在现有为数不多的方向感知用户推荐方法中,随机行走策略被广泛用于提取用户之间的不对称接近度。然而,根据我们对现实世界定向社交网络的分析,我们认为由于节点的入度和出度不平衡,现有的基于随机行走的方法捕获的不对称接近是不够的。为了解决这一挑战,我们提出了一种新的信息行走策略InfoWalk,该策略可以有效地捕获仅基于随机行走的不对称接近。通过将方向信息转化为每一步的权值,InfoWalk能够克服边缘的限制,同时保持方向和接近性。基于InfoWalk捕获的不对称接近性,我们进一步提出了定性(DNE-L)和定量(DNE-T)定向网络嵌入方法,能够在嵌入空间中保持这两种性质。在六个真实世界基准数据集上进行的大量实验表明,所提出的DNE模型在各种任务中优于几种最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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