Recently, making recommendations for ephemeral groups which contain dynamic users and few historic interactions have received an increasing number of attention. The main challenge of ephemeral group recommender is how to aggregate individual preferences to represent the group's overall preference. Score aggregation and preference aggregation are two commonly-used methods that adopt hand-craft predefined strategies and data-driven strategies, respectively. However, they neglect to take into account the importance of the individual inherent factors such as personality in the group. In addition, they fail to work well due to a small number of interactive records. To address these issues, we propose a Personality-Guided Preference Aggregator (PEGA) for ephemeral group recommendation. Concretely, we first adopt hyper-rectangle to define the concept of Group Personality. We then use the personality attention mechanism to aggregate group preferences. The role of personality in our approach is twofold: (1) To estimate individual users' importance in a group and provide explainability; (2) to alleviate the data sparsity issue that occurred in ephemeral groups. The experimental results demonstrate that our model significantly outperforms the state-of-the-art methods w.r.t. the score of both Recall and NDCG on Amazon and Yelp datasets.
翻译:近年来,为动态用户和历史互动较少的短暂群体进行推荐越来越受到关注。短暂群体推荐的主要挑战是如何将个体偏好综合起来代表群体总体偏好。分数融合和偏好融合是两种常用的方法,分别采用手工预定义策略和数据驱动策略。然而,它们忽略了个体内在因素(如人格)在群体中的重要性,而且由于互动记录较少而无法好用。为了解决这些问题,我们提出了一种面向短暂群体推荐的人格导向偏好融合器(PEGA)。具体来说,我们首先采用超矩形来定义群体人格的概念,然后使用人格关注机制来融合群体偏好。人格在我们的方法中起着双重作用:(1)估计个体用户在群体中的重要性并提供可解释性;(2)减轻短暂群体中出现的数据稀疏问题。实验结果表明,我们的模型在Amazon和Yelp数据集上的召回率和NDCG得分上显著优于现有最先进的方法。