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ExUP recommendations: Inferring user's product metadata preferences from single-criterion rating systems

机译:ExUP建议:从单标准评级系统推断用户的产品元数据首选项

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Recommendation systems make use of complex algorithms and methods to provide recommendations to consumers. Typically, online rating schemes use a single rating metric that captures the overall user experience with a product. Nevertheless, this might hinder the intricacies of how a product's attributes influence an individual's preferences. While it is possible to use sentiment and semantic analysis to interpret free text in user reviews, if available, to gain insight into a user's reasons for a product rating, these methods are expensive to implement and error prone, and rely on significant data input from the user. To overcome these challenges, we propose a method for inferring user preferences and generating recommendations without relying on the availability or quality of text reviews. Specifically, our method is designed to use existing product metadata and user rating patterns to shed light on how the attributes of a product correspond to individual preferences. Our method uses only the user's history of ratings and the corresponding product attributes to generate predicted ratings for products a user has not yet experienced. This work extends existing work in this area by focusing on multi-valued attributes, and considering the distinct impact of each attribute value in a user's preferences. In terms of computational complexity, our method runs in linear time, making it feasible for real-time implementations. Our experimental results showed that, compared with the two best-performing existing state of the art methods, our method provided review score predictions with up to: 47.7% greater precision, 6.9% greater recall, and 20.5% greater F-measure than existing methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:推荐系统利用复杂的算法和方法向消费者提供推荐。通常,在线评分方案使用单个评分指标来捕获产品的整体用户体验。然而,这可能会阻碍产品属性如何影响个人偏好的复杂性。尽管可以使用情感分析和语义分析来解释用户评论中的自由文本(如果有),以深入了解用户对产品进行评级的原因,但这些方法的实现成本高且容易出错,并且依赖于大量的数据输入用户。为了克服这些挑战,我们提出了一种无需依赖文本评论的可用性或质量即可推断用户偏好并生成推荐的方法。具体来说,我们的方法旨在使用现有的产品元数据和用户评分模式来阐明产品的属性如何对应于个人偏好。我们的方法仅使用用户的评分历史记录和相应的产品属性来生成用户尚未体验过的产品的预测评分。通过关注多值属性,并考虑每个属性值对用户首选项的不同影响,这项工作扩展了该领域中的现有工作。在计算复杂度方面,我们的方法以线性时间运行,因此对于实时实现是可行的。我们的实验结果表明,与现有的两种性能最佳的现有技术方法相比,我们的方法提供的评分得分预测比现有方法高多达47.7%,召回率高6.9%和F-measure高达20.5% 。 (C)2018 Elsevier B.V.保留所有权利。

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