Performance Evaluation of Aggregation-based Group Recommender Systems for Ephemeral Groups

E. Ceh-Varela, H. Cao, Hady W. Lauw
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引用次数: 3

Abstract

Recommender Systems (RecSys) provide suggestions in many decision-making processes. Given that groups of people can perform many real-world activities (e.g., a group of people attending a conference looking for a place to dine), the need for recommendations for groups has increased. A wide range of Group Recommender Systems (GRecSys) has been developed to aggregate individual preferences to group preferences. We analyze 175 studies related to GRecSys. Previous works evaluate their systems using different types of groups (sizes and cohesiveness), and most of such works focus on testing their systems using only one type of item, called Experience Goods (EG). As a consequence, it is hard to get consistent conclusions about the performance of GRecSys. We present the aggregation strategies and aggregation functions that GRecSys commonly use to aggregate group members’ preferences. This study experimentally compares the performance (i.e., accuracy, ranking quality, and usefulness) using four metrics (Hit Ratio, Normalize Discounted Cumulative Gain, Diversity, and Coverage) of eight representative RecSys for group recommendations on ephemeral groups. Moreover, we use two different aggregation strategies, 10 different aggregation functions, and two different types of items on two types of datasets (EG and Search Goods (SG)) containing real-life datasets. The results show that the evaluation of GRecSys needs to use both EG and SG types of data, because the different characteristics of datasets lead to different performance. GRecSys using Singular Value Decomposition or Neural Collaborative Filtering methods work better than others. It is observed that the Average aggregation function is the one that produces better results.
基于聚合的短暂群组推荐系统性能评价
推荐系统(RecSys)在许多决策过程中提供建议。考虑到一群人可以执行许多现实世界的活动(例如,一群人参加一个会议,寻找一个吃饭的地方),对群体推荐的需求就增加了。广泛的群体推荐系统(GRecSys)已被开发用于将个人偏好汇总到群体偏好。我们分析了175项与gresys相关的研究。之前的作品使用不同类型的群体(规模和凝聚力)来评估他们的系统,并且大多数作品都只使用一种类型的道具(称为Experience Goods (EG))来测试他们的系统。因此,很难对gresys的性能得出一致的结论。我们提出了GRecSys常用的聚合策略和聚合函数,用于聚合组成员的偏好。本研究使用四个指标(命中率、归一化贴现累积增益、多样性和覆盖率)对八个具有代表性的RecSys在短暂群体上的群体推荐进行了实验比较(即准确性、排名质量和有用性)。此外,我们使用了两种不同的聚合策略,10种不同的聚合函数,以及两种不同类型的项目在两种类型的数据集(EG和搜索商品(SG))上包含现实生活数据集。结果表明,GRecSys的评估需要同时使用EG和SG类型的数据,因为数据集的不同特征会导致不同的性能。使用奇异值分解或神经协同过滤方法的GRecSys比其他方法效果更好。可以观察到,平均聚合函数是产生较好结果的函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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