Preference Networks and Non-Linear Preferences in Group Recommendations

Amra Delic, F. Ricci, J. Neidhardt
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引用次数: 10

Abstract

Group recommender systems generate recommendations for a group by aggregating individual members’ preferences and finding items that are liked by most of the members. In this paper we introduce a new approach to preference aggregation and group choice prediction that is based on a new form of weighting individuals’ preferences. The approach is based on network science, and, in particular, it relies on the computation of node centrality scores in preferences similarity networks of groups. We also motivate and introduce a non-linear (exponential) remapping of the individuals’ preferences. Based on offline experiments we demonstrate: 1) non-linear remapping of preferences is useful to better predict group choices and generate recommendations; and 2) our weighted approach predicts the actual group choices more accurately than current state-of-the-art methods for group recommendations.CCS CONCEPTS• Information systems → Recommender systems; • Humancentered computing → User studies; User models; Social network analysis.
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群体推荐中的偏好网络和非线性偏好
群组推荐系统通过汇总单个成员的偏好,并找到大多数成员喜欢的项目,为群组生成推荐。本文提出了一种基于个体偏好加权的偏好聚合和群体选择预测的新方法。该方法基于网络科学,特别是依赖于群体偏好相似网络中节点中心性得分的计算。我们还激励并引入了个人偏好的非线性(指数)重新映射。基于离线实验,我们证明:1)偏好的非线性重映射有助于更好地预测群体选择并生成推荐;2)我们的加权方法比目前最先进的群体推荐方法更准确地预测实际的群体选择。•信息系统→推荐系统;•以人为本→用户研究;用户模型;社会网络分析。
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