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An Empirical Analysis of Design Choices in Neighborhood-Based Collaborative Filtering Algorithms

机译:基于邻域的协同过滤算法中设计选择的实证分析

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Collaborative filtering systems predict a user's interest in new items based on the recommendations of other people with similar interests. Instead of performing content indexing or content analysis, collaborative tillering systems rely entirely on interest ratings from members of a participating community. Since predictions are based on human ratings, collaborative filtering systems have the potential to provide filtering based on complex attributes, such as quality, taste, or aesthetics. Many implementations of collaborative filtering apply some variation of the neighborhood-based prediction algorithm. Many variations of similarity metrics, weighting approaches, combination measures, and rating normalization have appeared in each implementation. For these parameters and others, there is no consensus as to which choice of technique is most appropriate for what situations, nor how significant an effect on accuracy each parameter has. Consequently, every person implementing a collaborative filtering system must make hard design choices with little guidance. This article provides a set of recommendations to guide design of neighborhood-based prediction systems, based on the results of an empirical study. We apply an analysis framework that divides the neighborhood-based prediction approach into three components and then examines variants of the key parameters in each component. The three components identified are similarity computation, neighbor selection, and rating combination.
机译:协作过滤系统根据具有相似兴趣的其他人的建议来预测用户对新项目的兴​​趣。协作分er系统没有执行内容索引或内容分析,而是完全依赖参与社区成员的兴趣评级。由于预测是基于人类评级的,因此协作过滤系统具有基于复杂属性(例如质量,口味或美观度)提供过滤的潜力。协作过滤的许多实现方式都应用了基于邻域的预测算法的某些变体。每种实现中都出现了相似性度量,加权方法,组合度量和评级规范化的许多变体。对于这些参数和其他参数,对于哪种技术最适合哪种情况,以及每个参数对精度的影响有多大,尚无共识。因此,每个实施协作过滤系统的人都必须在很少指导的情况下做出艰难的设计选择。本文基于实证研究的结果提供了一组建议,以指导基于邻域的预测系统的设计。我们应用一个分析框架,将基于邻域的预测方法分为三个部分,然后检查每个部分中关键参数的变体。确定的三个组件是相似度计算,邻居选择和评级组合。

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