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Content-Boosted Collaborative Filtering for Improved Recommendations

机译:内容提升的协作过滤,提高了建议

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Most recommender systems use Collaborative Filtering or Content-based methods to predict new items of interest for a user. While both methods have their own advantages, individually they fail to provide good recommendations in many situations. Incorporating components from both methods, a hybrid recommender system can overcome these shortcomings. In this paper, we present an elegant and effective framework for combining content and collaboration. Our approach uses a content-based predictor to enhance existing user data, and then provides personalized suggestions through collaborative filtering. We present experimental results that show how this approach, Content-Boosted Collaborative Filtering, performs better than a pure content-based predictor, pure collaborative filter, and a naive hybrid approach.
机译:大多数推荐系统使用协作过滤或基于内容的方法来预测用户的新感兴趣的项目。虽然这两种方法都有自己的优势,但它们在许多情况下都无法提供良好的建议。使用两种方法的组件,混合推荐系统可以克服这些缺点。在本文中,我们为结合内容和协作提供了优雅有效的框架。我们的方法使用基于内容的预测器来增强现有用户数据,然后通过协同过滤提供个性化建议。我们提出了实验结果,示出了这种方法如何,升高的协作滤波,比基于纯的基于内容的预测器,纯协同滤波器和天真的混合方法更好地执行。

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