A comparison of calibrated and intent-aware recommendations

Mesut Kaya, D. Bridge
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引用次数: 27

Abstract

Calibrated and intent-aware recommendation are recent approaches to recommendation that have apparent similarities. Both try, to a certain extent, to cover the user's interests, as revealed by her user profile. In this paper, we compare them in detail. On two datasets, we show the extent to which intent-aware recommendations are calibrated and the extent to which calibrated recommendations are diverse. We consider two ways of defining a user's interests, one based on item features, the other based on subprofiles of the user's profile. We find that defining interests in terms of subprofiles results in highest precision and the best relevance/diversity trade-off. Along the way, we define a new version of calibrated recommendation and three new evaluation metrics.
校准建议和有意识建议的比较
校准推荐和意图感知推荐是最近的推荐方法,具有明显的相似性。两者都试图在一定程度上掩盖用户的兴趣,正如她的用户资料所揭示的那样。本文对两者进行了详细的比较。在两个数据集上,我们展示了意图感知推荐的校准程度和校准推荐的多样化程度。我们考虑了两种定义用户兴趣的方法,一种基于项目特征,另一种基于用户个人资料的子概要。我们发现,根据子剖面定义兴趣可以获得最高的精度和最佳的相关性/多样性权衡。在此过程中,我们定义了一个新版本的校准推荐和三个新的评估指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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