Building Discriminative User Profiles for Large-scale Content Recommendation

Erheng Zhong, N. Liu, Yue Shi, Suju Rajan
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引用次数: 23

Abstract

Content recommendation systems are typically based on one of the following paradigms: user based customization, or recommendations based on either collaborative filtering or low rank matrix factorization methods, or with systems that impute user interest profiles based on content browsing behavior and retrieve items similar to the interest profiles. All of these systems have a distinct disadvantage, namely data sparsity and cold-start on items or users. Furthermore, very few content recommendation solutions explicitly model the wealth of information in implicit negative feedback from the users. In this paper, we propose a hybrid solution that makes use of a latent factor model to infer user interest vectors. The hybrid approach enables us to overcome both the data sparsity and cold-start problems. Our proposed method is learned purely on implicit user feedback, both positive and negative. Exploiting the information in the negative feedback allows the user profiles generated to be discriminative. We also provide a Map/Reduce framework based implementation that enables scaling our solution to real-world recommendation problems. We demonstrate the efficacy of our proposed approach with both offline experiments and A/B tests on live traffic on Yahoo properties.
为大规模内容推荐建立判别用户配置文件
内容推荐系统通常基于以下范例之一:基于用户的定制,或基于协作过滤或低秩矩阵分解方法的推荐,或基于内容浏览行为推断用户兴趣配置文件并检索与兴趣配置文件相似的项目的系统。所有这些系统都有一个明显的缺点,即数据稀疏性和对项目或用户的冷启动。此外,很少有内容推荐解决方案明确地对用户隐式负面反馈中的丰富信息进行建模。在本文中,我们提出了一种混合解决方案,利用潜在因素模型来推断用户兴趣向量。混合方法使我们能够克服数据稀疏性和冷启动问题。我们提出的方法纯粹是在隐含的用户反馈上学习的,包括积极的和消极的。利用负反馈中的信息可以使生成的用户配置文件具有区别性。我们还提供了一个基于Map/Reduce框架的实现,可以将我们的解决方案扩展到现实世界的推荐问题。我们通过离线实验和对雅虎资产的实时流量进行A/B测试来证明我们提出的方法的有效性。
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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