One of the main challenges in recommender systems is data sparsity which leads to high variance. Several attempts have been made to improve the bias-variance trade-off using auxiliary information. In particular, document modeling-based methods have improved the model's accuracy by using textual data such as reviews, abstracts, and storylines when the user-to-item rating matrix is sparse. However, such models are insufficient to learn optimal representation for users and items. User-based and item-based collaborative filtering, owing to their efficiency and interpretability, have been long used for building recommender systems. They create a profile for each user and item respectively as their historically interacted items and the users who interacted with the target item. This work combines these two approaches with document context-aware recommender systems by considering users' opinions on these items. Another advantage of our model is that it supports online personalization. If a user has new interactions, it needs to refresh the user and item history representation vectors instead of updating model parameters. The proposed algorithm is implemented and tested on three real-world datasets that demonstrate our model's effectiveness over the baseline methods.
翻译:推荐人系统中的主要挑战之一是数据宽度,这导致差异很大。一些尝试都试图利用辅助信息改进偏差取舍。特别是,以文件建模为基础的方法,在用户对项目评级矩阵稀少时,通过使用诸如评论、摘要和故事线等文本数据,提高了模型的准确性。然而,这些模型不足以为用户和项目学习最佳代表性。基于用户和基于项目的合作过滤,由于其效率和可解释性,长期以来一直用于建设推荐人系统。它们分别为每个用户和项目制作一个剖面图,作为它们历来互动的项目和与目标项目互动的用户。这项工作通过考虑用户对这些项目的意见,将这两种方法与文件认知建议系统结合起来。我们模型的另一个优点是支持在线个人化。如果用户有新的互动,则需要更新用户和项目历史显示矢量,而不是更新模型参数。拟议的算法是在三个真实世界数据集上实施和测试的,以显示我们模型在基线方法上的有效性。