Personalized recommendation algorithms learn a user's preference for an item by measuring a distance/similarity between them. However, some of the existing recommendation models (e.g., matrix factorization) assume a linear relationship between the user and item. This approach limits the capacity of recommender systems, since the interactions between users and items in real-world applications are much more complex than the linear relationship. To overcome this limitation, in this paper, we design and propose a deep learning framework called Signed Distance-based Deep Memory Recommender, which captures non-linear relationships between users and items explicitly and implicitly, and work well in both general recommendation task and shopping basket-based recommendation task. Through an extensive empirical study on six real-world datasets in the two recommendation tasks, our proposed approach achieved significant improvement over ten state-of-the-art recommendation models.
翻译:个人化建议算法通过衡量用户之间的距离/差异来了解用户对某一项目的偏好,但有些现有建议模式(例如矩阵因数化)假定用户与项目之间存在线性关系,这种办法限制了推荐者系统的能力,因为用户与现实应用中的项目之间的互动比线性关系复杂得多。为了克服这一局限性,我们在本文件中设计和提议了一个称为“远程深海记忆建议”的深层次学习框架,它明确和隐含地记录用户与项目之间的非线性关系,在一般性建议任务和购物篮子建议任务两方面都很好地工作。通过对两个建议任务中的六个真实世界数据集进行广泛的经验研究,我们拟议的方法在10个最先进的建议模式上取得了重大改进。