GhostLink: Latent Network Inference for Influence-aware Recommendation

Subhabrata Mukherjee, Stephan Günnemann
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引用次数: 8

Abstract

Social influence plays a vital role in shaping a user's behavior in online communities dealing with items of fine taste like movies, food, and beer. For online recommendation, this implies that users' preferences and ratings are influenced due to other individuals. Given only time-stamped reviews of users, can we find out who-influences-whom, and characteristics of the underlying influence network? Can we use this network to improve recommendation? While prior works in social-aware recommendation have leveraged social interaction by considering the observed social network of users, many communities like Amazon, Beeradvocate, and Ratebeer do not have explicit user-user links. Therefore, we propose GhostLink, an unsupervised probabilistic graphical model, to automatically learn the latent influence network underlying a review community - given only the temporal traces (timestamps) of users' posts and their content. Based on extensive experiments with four real-world datasets with 13 million reviews, we show that GhostLink improves item recommendation by around 23% over state-of-the-art methods that do not consider this influence. As additional use-cases, we show that GhostLink can be used to differentiate between users' latent preferences and influenced ones, as well as to detect influential users based on the learned influence graph.
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GhostLink:影响感知推荐的潜在网络推断
在网络社区中,社交影响在塑造用户的行为方面起着至关重要的作用,这些行为涉及到电影、食物和啤酒等品味良好的物品。对于在线推荐,这意味着用户的偏好和评分受到其他个体的影响。如果只给出带有时间戳的用户评论,我们能找出谁影响了谁,以及潜在影响网络的特征吗?我们可以利用这个网络来改进推荐吗?虽然之前在社会意识推荐方面的工作通过考虑观察到的用户社交网络来利用社会互动,但许多社区,如Amazon、Beeradvocate和Ratebeer,并没有明确的用户-用户链接。因此,我们提出了GhostLink,一种无监督概率图形模型,仅给定用户帖子及其内容的时间痕迹(时间戳),就可以自动学习评论社区底层的潜在影响网络。基于对四个真实世界数据集和1300万条评论的广泛实验,我们表明GhostLink比不考虑这种影响的最先进方法提高了约23%的商品推荐。作为额外的用例,我们表明GhostLink可用于区分用户的潜在偏好和受影响的偏好,以及基于学习的影响图检测有影响力的用户。
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