论文标题
Super-Rec:周围位置增强的表示形式
SUPER-Rec: SUrrounding Position-Enhanced Representation for Recommendation
论文作者
论文摘要
协作过滤问题通常是基于矩阵完成技术来解决的,这些技术恢复了用户项目交互矩阵的缺失值。在矩阵中,额定位置专门表示给定的用户和额定值。以前的矩阵完成技术倾向于忽略矩阵中每个元素(用户,项目和评分)的位置,但主要关注用户和项目之间的语义相似性,以预测矩阵中的缺失值。本文提出了一种新颖的位置增强的用户/项目表示培训模型,用于推荐,Super-Rec。我们首先使用相对位置评估编码并存储位置增强的额定信息及其用户项目与嵌入的固定维度的关系,并存储不受矩阵大小影响的嵌入式固定维度,并存储了矩阵中的额定位置。然后,我们将受过训练的位置增强用户和项目表示形式应用于最简单的传统机器学习模型,以突出我们表示模型的纯粹新颖性。我们对建议域中的位置增强项目表示形式进行了首次正式介绍和定量分析,并对我们的Super-Rec进行了原则性的讨论,以表现出典型的协作过滤推荐任务的表现,并具有显式和隐式反馈。
Collaborative filtering problems are commonly solved based on matrix completion techniques which recover the missing values of user-item interaction matrices. In a matrix, the rating position specifically represents the user given and the item rated. Previous matrix completion techniques tend to neglect the position of each element (user, item and ratings) in the matrix but mainly focus on semantic similarity between users and items to predict the missing value in a matrix. This paper proposes a novel position-enhanced user/item representation training model for recommendation, SUPER-Rec. We first capture the rating position in the matrix using the relative positional rating encoding and store the position-enhanced rating information and its user-item relationship to the fixed dimension of embedding that is not affected by the matrix size. Then, we apply the trained position-enhanced user and item representations to the simplest traditional machine learning models to highlight the pure novelty of our representation learning model. We contribute the first formal introduction and quantitative analysis of position-enhanced item representation in the recommendation domain and produce a principled discussion about our SUPER-Rec to the outperformed performance of typical collaborative filtering recommendation tasks with both explicit and implicit feedback.