Long-term fairness for Group Recommender Systems with Large Groups

Patrik Dokoupil
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引用次数: 2

Abstract

Group recommender systems (GRS) focus on recommending items to groups of users. GRS need to tackle the heterogeneity of group members’ preferences and produce recommendations of high overall utility while also considering some sense of fairness among group members. This work plans to aim for novel applications of GRS involving construction of large-scale groups of users and focusing on the long-term fairness of these groups which is in contrast with current research that concentrates on small groups of ephemeral nature. We believe that these directions could bring results of significant societal impact and scope of the effect expanding beyond currently considered GRS domains, e.g., helping to mitigate the filter bubble problem
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大群组群组推荐系统的长期公平性
群体推荐系统(GRS)侧重于向用户群体推荐商品。GRS需要解决群体成员偏好的异质性,在考虑群体成员之间的公平感的同时,提出高整体效用的建议。这项工作计划着眼于GRS的新应用,涉及大规模用户群体的构建,并专注于这些群体的长期公平性,这与目前专注于短暂性质的小群体的研究形成鲜明对比。我们认为,这些方向可以带来重大的社会影响和影响范围,超出目前认为的GRS领域,例如,有助于缓解过滤气泡问题
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