This comprehensive survey provides an in-depth analysis of the latest advancements in self-supervised learning (SSL) frameworks designed for recommendation systems. It covers over 170 research papers and explores nine distinct recommendation scenarios, enabling a thorough understanding of how SSL enhances recommender systems in various contexts.
The survey begins by introducing the fundamentals of recommendation systems and self-supervised learning. It then presents a detailed taxonomy that categorizes SSL methods into three main paradigms: contrastive learning, generative learning, and adversarial learning.
For each paradigm, the survey delves into the technical details, discussing view creation, pair sampling, and contrastive objectives in contrastive learning, as well as the different generative learning approaches (masked autoencoding, variational autoencoding, and denoised diffusion) and their generation targets. Additionally, the survey examines both non-differentiable and differentiable adversarial learning approaches and their discrimination targets.
The survey then explores the application of these SSL techniques across nine recommendation scenarios, including general collaborative filtering, sequential recommendation, social recommendation, knowledge-aware recommendation, cross-domain recommendation, group recommendation, bundle recommendation, multi-modal recommendation, and multi-behavior recommendation. For each scenario, the survey provides a comprehensive review of the state-of-the-art SSL-enhanced recommender models and their key contributions.
Finally, the survey concludes by discussing open problems and future research directions in this rapidly evolving field, offering valuable insights for researchers and practitioners working on recommendation systems.
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