“我有时喜欢探索”:适应动态用户新奇偏好

Komal Kapoor, Vikas Kumar, L. Terveen, J. Konstan, P. Schrater
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引用次数: 100

摘要

研究表明,推荐未见过的、新奇的或偶然发现的物品对于获得令人满意和吸引人的用户体验至关重要。因此,最近推荐研究的发展越来越关注于在用户推荐列表中引入新颖性。虽然现有的解决方案旨在在推荐项目的相似性和新颖性之间找到适当的平衡,但它们在很大程度上忽略了用户对新颖性的需求。在本文中,我们发现用户的新奇偏好存在较大的个体差异和时间差异。我们开发了一个回归模型来预测这些动态的新奇偏好的用户使用的特征,从他们过去的互动。最后,我们描述了一个自适应推荐器\emph{adaNov-R},它适应用户对新奇物品的需求,并表明该模型在考虑新奇物品和熟悉物品的度量标准上取得了更好的推荐性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
"I like to explore sometimes": Adapting to Dynamic User Novelty Preferences
Studies have shown that the recommendation of unseen, novel or serendipitous items is crucial for a satisfying and engaging user experience. As a result, recent developments in recommendation research have increasingly focused towards introducing novelty in user recommendation lists. While, existing solutions aim to find the right balance between the similarity and novelty of the recommended items, they largely ignore the user needs for novelty. In this paper, we show that there are large individual and temporal differences in the users' novelty preferences. We develop a regression model to predict these dynamic novelty preferences of users using features derived from their past interactions. Finally, we describe an adaptive recommender,~\emph{adaNov-R}, that adapts to the user needs for novel items and show that the model achieves better recommendation performance on a metric that considers both novel and familiar items.
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