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Text Retrieval Methods for Item Ranking in Collaborative Filtering

机译:协同过滤中用于项目排序的文本检索方法

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Collaborative Filtering (CF) aims at predicting unknown ratings of a user from other similar users. The uniqueness of the problem has made its formulation distinctive to other information retrieval problems. While the formulation has proved to be effective in rating prediction tasks, it has limited the potential connections between these algorithms and Information Retrieval (IR) models. In this paper we propose a common notational framework for IR and rating-based CF, as well as a technique to provide CF data with a particular structure, in order to be able to use any IR weighting function with it. We argue that the flexibility of our approach may yield to much better performing algorithms. In fact, in this work we have found that IR models perform well in item ranking tasks, along with different normalization strategies.
机译:协作过滤(CF)旨在预测其他相似用户的未知评级。问题的独特性使其制定方式与其他信息检索问题截然不同。尽管已证明该公式在评级预测任务中是有效的,但它限制了这些算法与信息检索(IR)模型之间的潜在联系。在本文中,我们提出了一种用于IR和基于评级的CF的通用符号框架,以及一种为CF数据提供特定结构的技术,以便能够与它一起使用任何IR加权函数。我们认为,我们方法的灵活性可能会产生性能更好的算法。实际上,在这项工作中,我们发现IR模型以及不同的归一化策略在项目排名任务中表现良好。

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