论文标题

将用户和项目观点连接为普遍的依据,以进行协作推荐

Connecting User and Item Perspectives in Popularity Debiasing for Collaborative Recommendation

论文作者

Boratto, Ludovico, Fenu, Gianni, Marras, Mirko

论文摘要

推荐系统从历史用户的反馈中学习,这些反馈通常是在项目之间不均匀分布的。结果,即使后者对用户感兴趣,这些系统最终可能会逐渐暗示流行物品。这可能会妨碍推荐列表(例如新颖性,覆盖范围,多样性)的几种核心品质,从而影响了基础平台本身的未来成功。在本文中,我们对两个新颖的指标进行了形式化,这些指标量化了推荐系统在受欢迎的尾巴上同样处理物品的程度。第一个鼓励在项目中推荐的同等可能性,而第二个则鼓励实际的正率使项目相等。我们通过提出的指标来表征代表性算法的建议,并表明推荐的项目概率和项目真正的正率与项目流行的偏见。为了促进沿流行尾巴的项目的更平等处理,我们提出了一种旨在最大程度地减少用户项目相关性和项目受欢迎程度之间有偏见的相关性的内部处理方法。广泛的实验表明,由于准确性的损失很小,我们的受欢迎程度降低方法会带来超越准确性建议质量的重要收益。

Recommender systems learn from historical users' feedback that is often non-uniformly distributed across items. As a consequence, these systems may end up suggesting popular items more than niche items progressively, even when the latter would be of interest for users. This can hamper several core qualities of the recommended lists (e.g., novelty, coverage, diversity), impacting on the future success of the underlying platform itself. In this paper, we formalize two novel metrics that quantify how much a recommender system equally treats items along the popularity tail. The first one encourages equal probability of being recommended across items, while the second one encourages true positive rates for items to be equal. We characterize the recommendations of representative algorithms by means of the proposed metrics, and we show that the item probability of being recommended and the item true positive rate are biased against the item popularity. To promote a more equal treatment of items along the popularity tail, we propose an in-processing approach aimed at minimizing the biased correlation between user-item relevance and item popularity. Extensive experiments show that, with small losses in accuracy, our popularity-mitigation approach leads to important gains in beyond-accuracy recommendation quality.

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