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View-based Recommender Systems

机译:基于视图的推荐系统

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摘要

Different recommender systems based on collaborative technology have been proposed that recommend new relevant products to users by exploring past user preference patterns. The most common approach generates recommendations based on user consumption patterns and on rating information gathered during each user-item interaction. In this paper we introduce a novel approach based on views of items, which are basically more complex models of the user-item interactions aimed at capturing the aspects on which users base their ratings. The resulting view-based approach recommends views to users instead of the traditional items. The proposed algorithms are tested on an artificial database, and the results show that modeling further interaction information improves the accuracy of predictions, provides a robust background to explain recommendations, exposes users to more specific recommendations and leads to better models of user preferences.
机译:已经提出了基于协作技术的不同推荐系统,其通过探索过去的用户偏好模式来向用户推荐新的相关产品。最常见的方法是根据用户消费模式和每次用户项目交互过程中收集的评级信息生成建议。在本文中,我们介绍了一种基于项目视图的新颖方法,该方法基本上是用户-项目交互的更复杂模型,旨在捕获用户基于其评分的方面。最终的基于视图的方法向用户推荐视图,而不是传统项目。所提出的算法在人工数据库上进行了测试,结果表明,对进一步的交互信息进行建模可以提高预测的准确性,为解释建议提供强大的背景,使用户可以使用更具体的建议,并可以建立更好的用户偏好模型。

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