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首页> 外文期刊>Frontiers of Information Technology & Electronic Engineering >Personalized topic modeling for recommending user-generated content
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Personalized topic modeling for recommending user-generated content

机译:个性化主题建模,可推荐用户生成的内容

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user-generated content (UGC) such as blogs and twitters are exploding in modern Internet services. In such systems, recommender systems are needed to help people filter vast amount of UGC generated by other users. However, traditional recommendation models do not use user authorship of items. In this paper, we show that with this additional information, we can significantly improve the performance of recommendations. A generative model that combines hierarchical topic modeling and matrix factorization is proposed. Empirical results show that our model outperforms other state-of-the-art models, and can provide interpretable topic structures for users and items. Furthermore, since user interests can be inferred from their productions, recommendations can be made for users that do not have any ratings to solve the cold-start problem.
机译:用户生成的内容(UGC)(例如博客和Twitter)在现代Internet服务中呈爆炸性增长。在这样的系统中,需要推荐系统来帮助人们过滤其他用户生成的大量UGC。但是,传统的推荐模型不使用项目的用户权限。在本文中,我们表明,利用这些附加信息,我们可以显着提高建议的性能。提出了一种将分层主题建模和矩阵分解相结合的生成模型。实证结果表明,我们的模型优于其他最新模型,并且可以为用户和项目提供可解释的主题结构。此外,由于可以从他们的产品中推断出用户的兴趣,因此可以为没有任何评级的用户提供建议来解决冷启动问题。

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