Recommendations in Signed Social Networks

Jiliang Tang, C. Aggarwal, Huan Liu
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引用次数: 101

Abstract

Recommender systems play a crucial role in mitigating the information overload problem in social media by suggesting relevant information to users. The popularity of pervasively available social activities for social media users has encouraged a large body of literature on exploiting social networks for recommendation. The vast majority of these systems focus on unsigned social networks (or social networks with only positive links), while little work exists for signed social networks (or social networks with positive and negative links). The availability of negative links in signed social networks presents both challenges and opportunities in the recommendation process. We provide a principled and mathematical approach to exploit signed social networks for recommendation, and propose a model, RecSSN, to leverage positive and negative links in signed social networks. Empirical results on real-world datasets demonstrate the effectiveness of the proposed framework. We also perform further experiments to explicitly understand the effect of signed networks in RecSSN.
签名社交网络中的推荐
推荐系统通过向用户推荐相关信息,在缓解社交媒体信息过载问题上发挥着至关重要的作用。社交媒体用户无处不在的社交活动的流行,鼓励了大量关于利用社交网络进行推荐的文献。这些系统中的绝大多数都专注于未签名的社交网络(或只有积极链接的社交网络),而针对有签名的社交网络(或有积极和消极链接的社交网络)的工作却很少。签名社交网络中负面链接的可用性在推荐过程中既是挑战也是机遇。我们提供了一个原则性和数学方法来利用签名社交网络进行推荐,并提出了一个模型,RecSSN,以利用签名社交网络中的积极和消极联系。实际数据集的实证结果证明了所提出框架的有效性。我们还进行了进一步的实验来明确地理解签名网络在RecSSN中的影响。
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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