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Investigating and counteracting popularity bias in group recommendations

机译:集团建议中调查和抵制人气偏见

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Popularity bias is an undesirable phenomenon associated with recommendation algorithms where popular items tend to be suggested over long-tail ones, even if the latter would be of reasonable interest for individuals. Such intrinsic tendencies of the recommenders may lead to producing ranked lists, in which items are not equally covered along the popularity tail. Although some recent studies aim to detect such biases of traditional algorithms and treat their effects on recommendations, the concept of popularity bias remains elusive for group recommender systems. Therefore, in this study, we focus on investigating popularity bias from the view of group recommender systems, which aggregate individual preferences to achieve recommendations for groups of users. We analyze various state-of-the-art aggregation techniques utilized in group recommender systems regarding their bias towards popular items. To counteract possible popularity issues in group recommendations, we adapt a traditional re-ranking approach that weighs items inversely proportional to their popularity within a group. Also, we propose a novel popularity bias mitigation procedure that re-ranks items by incorporating their popularity level and estimated group ratings in two distinct strategies. The first one aims to penalize popular items during the aggregation process highly and avoids bias better, while the second one puts more emphasis on group ratings than popularity and achieves a more balanced performance regarding conflicting goals of mitigating bias and boosting accuracy. Experiments performed on four real-world benchmark datasets demonstrate that both strategies are more efficient than the adapted approach, and empowering aggregation techniques with one of these strategies significantly decreases their bias towards popular items while maintaining reasonable ranking accuracy.
机译:人气偏见是与推荐算法相关的不良现象,其中流行的物品往往会在长尾的推荐中建议,即使后者对个体的合理兴趣也是合理的。这些建议员的这种内在趋势可能导致生产排名的清单,其中物品并没有沿着普及尾部覆盖。虽然最近的一些研究旨在检测传统算法的这种偏见并对待他们对建议的影响,但受欢迎程度偏见的概念仍然难以实现组推荐系统。因此,在本研究中,我们专注于从集团推荐系统的视野中调查人气偏见,这些系统聚合各个偏好以实现用户组的建议。我们分析了各种最先进的聚合技术,用于对流行项目的偏见的集体推荐系统。为了抵消集团建议的可能受欢迎程度,我们适应传统的重新排名方法,该方法将重量与群体中的普及成反比。此外,我们提出了一种新的受欢迎程度偏见缓解程序,通过将其普及水平和估计的群体评级纳入两个不同的策略来重新排名项目。第一个旨在高度惩罚聚合过程中的流行项目,避免更好地偏见,而第二个则更加强调群体评级,而不是受欢迎程度,并实现了有关缓解偏差和提升准确性的冲突目标的更平衡的性能。在四个真实的基准数据集上进行的实验表明,两种策略比适应性的方法更有效,并且具有这些策略之一的聚集技术具有重要的聚集技术,显着降低了对流行项目的偏差,同时保持合理的排名准确性。

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