冷启动项目推荐的不确定性感知一致性学习

Taichi Liu, Chen Gao, Zhenyu Wang, Dong Li, Jianye Hao, Depeng Jin, Yong Li
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引用次数: 0

摘要

基于图神经网络(GNN)的模型已经成为推荐系统的主流方法。尽管有效果,但它们仍然存在冷启动问题,即推荐较少的交互项。现有的基于gnn的冷启动推荐模型主要侧重于利用用户和物品的辅助特征,没有充分利用用户与物品的交互。然而,冷项目和暖项目的嵌入分布仍然有很大的不同,因为冷项目的嵌入是从低流行互动中学习的,而热项目的嵌入是从高流行互动中学习的。因此,存在跷跷板现象,即冷项和暖项的推荐性能不能同时提高。为此,我们提出了一个基于用户-项目交互的冷启动项目推荐(简称UCC)的不确定性感知一致性学习框架。在此框架下,我们对教师模型(生成器)和学生模型(推荐者)进行一致性学习训练,以确保额外产生低不确定性交互的冷项目与热项目具有相似的分布。因此,所提出的框架在不损害任何一个项目的情况下,同时改进了冷项目和暖项目的推荐。在基准数据集上进行的大量实验表明,我们提出的方法在冷热物品上的性能都明显优于最先进的方法,平均性能提高27.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty-aware Consistency Learning for Cold-Start Item Recommendation
Graph Neural Network (GNN)-based models have become the mainstream approach for recommender systems. Despite the effectiveness, they are still suffering from the cold-start problem, i.e., recommend for few-interaction items. Existing GNN-based recommendation models to address the cold-start problem mainly focus on utilizing auxiliary features of users and items, leaving the user-item interactions under-utilized. However, embeddings distributions of cold and warm items are still largely different, since cold items' embeddings are learned from lower-popularity interactions, while warm items' embeddings are from higher-popularity interactions. Thus, there is a seesaw phenomenon, where the recommendation performance for the cold and warm items cannot be improved simultaneously. To this end, we proposed a Uncertainty-aware Consistency learning framework for Cold-start item recommendation (shorten as UCC) solely based on user-item interactions. Under this framework, we train the teacher model (generator) and student model (recommender) with consistency learning, to ensure the cold items with additionally generated low-uncertainty interactions can have similar distribution with the warm items. Therefore, the proposed framework improves the recommendation of cold and warm items at the same time, without hurting any one of them. Extensive experiments on benchmark datasets demonstrate that our proposed method significantly outperforms state-of-the-art methods on both warm and cold items, with an average performance improvement of 27.6%.
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