SOTAVerified

Data Augmentation for Sequential Recommendation: A Survey

2024-09-20Code Available3· sign in to hype

Yizhou Dang, Enneng Yang, YuTing Liu, Guibing Guo, Linying Jiang, Jianzhe Zhao, Xingwei Wang

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

As an essential branch of recommender systems, sequential recommendation (SR) has received much attention due to its well-consistency with real-world situations. However, the widespread data sparsity issue limits the SR model's performance. Therefore, researchers have proposed many data augmentation (DA) methods to mitigate this phenomenon and have achieved impressive progress. In this survey, we provide a comprehensive review of DA methods for SR. We start by introducing the research background and motivation. Then, we categorize existing methodologies regarding their augmentation principles, objects, and purposes. Next, we present a comparative discussion of their advantages and disadvantages, followed by the exhibition and analysis of representative experimental results. Finally, we outline directions for future research and summarize this survey. We also maintain a repository with a paper list at https://github.com/KingGugu/DA-CL-4Rec.

Tasks

Reproductions