发现你因什么而出名:一种语境泊松分解方法

Haokai Lu, James Caverlee, Wei Niu
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引用次数: 5

摘要

发现人们因什么而出名对许多重要的应用程序(如推荐系统)都很有价值。与个人的个人兴趣不同,用户的知名度是由其他人的观点反映出来的,并且通常不容易被绝大多数用户的长尾所识别。在本文中,我们通过一个称为贝叶斯上下文泊松分解的概率模型来解决发现用户已知的问题。它超越了对用户内容的建模,自然地建模和整合了额外的上下文因素,具体来说,就是用户的地理空间足迹和社会影响,以克服嘈杂的在线活动和社会关系。通过gps标记的社交媒体数据集,我们发现该方法可以将已知预测性能平均提高17.5%的精度和20.9%的召回率,并且它可以捕获用户已知个人资料与其内容,地理空间和社会影响之间的隐含关系。
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Discovering What You're Known For: A Contextual Poisson Factorization Approach
Discovering what people are known for is valuable to many important applications such as recommender systems. Unlike an individual's personal interests, what a user is known for is reflected by the views of others, and is often not easily discerned for a long-tail of the vast majority of users. In this paper, we tackle the problem of discovering what users are known for through a probabilistic model called Bayesian Contextual Poisson Factorization. Moving beyond just modeling user's content, it naturally models and integrates additional contextual factors, concretely, user's geo-spatial footprints and social influence, to overcome noisy online activities and social relations. Through GPS-tagged social media datasets, we find that the proposed method can improve known-for prediction performance by 17.5% in precision and 20.9% in recall on average, and that it can capture the implicit relationships between a user's known-for profile and her content, geo-spatial and social influence.
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