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An Algorithm Independent Case-Based Explanation Approach for Recommender Systems Using Interaction Graphs

机译:基于交互图的推荐系统的独立于案例的基于算法的解释方法

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Explanations in recommender systems are essential to improve user confidence in the recommendation. Traditionally, recommendation algorithms are based on ratings or additional information about the item features or the user profile. But some of these approaches are implemented as black boxes where this information is not available to provide the explanations. In this work, we propose a case-based approach to support this kind of black-box recommenders in order to find explanatory examples. It is a knowledge-light approach that only requires the information extracted from the interactions between users and items. As these interaction graphs can be analyzed through social network analysis, we propose the use of link prediction techniques to find the most suitable explanatory cases for a recommended item.
机译:推荐系统中的说明对于提高用户对推荐的信心至关重要。传统上,推荐算法基于等级或有关商品功能或用户个人资料的其他信息。但是这些方法中的一些方法被实现为黑匣子,在该黑匣子中此信息不可用于提供解释。在这项工作中,我们提出了一种基于案例的方法来支持这种黑匣子推荐程序,以便找到说明性的示例。这是一种知识轻巧的方法,只需要从用户和项目之间的交互中提取信息即可。由于可以通过社交网络分析来分析这些交互图,因此我们建议使用链接预测技术来找到推荐项目的最合适的解释案例。

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