The task of recommending items to a group of users, a.k.a. group recommendation, is receiving increasing attention. However, the cold-start problem inherent in recommender systems is amplified in group recommendation because interaction data between groups and items are extremely scarce in practice. Most existing work exploits associations between groups and items to mitigate the data scarcity problem. However, existing approaches inevitably fail in extreme cold-start scenarios where associations between groups and items are lacking. For this reason, we design a group recommendation model for EXreme cold-star} in group REcommendation (EXTRE) suitable for the extreme cold start scenario. The basic idea behind EXTRE is to use the limit theory of graph convolutional neural networks to establish implicit associations between groups and items, and the derivation of these associations does not require explicit interaction data, making it suitable for cold start scenarios. The training process of EXTRE depends on the newly defined and interpretable concepts of consistency and discrepancy, other than commonly used negative sampling with pairwise ranking, which can improve the performance of the group recommendation. Extensive experiments validate the efficacy of the proposed model EXTRE.
翻译:向一组用户推荐项目的任务(a.k.a.a.集团建议)正在受到越来越多的注意。然而,建议系统固有的冷启动问题在小组建议中被放大,因为各组和项目之间的互动数据在实践中极为稀少。大多数现有工作利用了各组和项目之间的关联来缓解数据稀缺问题。然而,在极端冷启动情况下,如各组和项目之间缺乏关联,现有办法必然会失败。为此,我们为集团建议(EXreme cold-star})中适合极端冷启动情景的群建建议模式(EXTRE)设计了一个适合极端冷启动情景的群建建议模式。EXTRE的基本想法是使用图层神经网络的限值理论来建立各组和项目之间的隐含关联,而这些关联的衍生不需要明确的互动数据,使之适合冷启动情景。EXTRE的培训过程取决于新定义和可解释的一致和差异概念,而不是通常使用的对齐排序的负面抽样,这样可以改进小组建议的绩效。广泛的实验证实了拟议的模型的有效性。