English

Learning Robust Sequential Recommenders through Confident Soft Labels

Information Retrieval 2023-11-07 v1

Abstract

Sequential recommenders that are trained on implicit feedback are usually learned as a multi-class classification task through softmax-based loss functions on one-hot class labels. However, one-hot training labels are sparse and may lead to biased training and sub-optimal performance. Dense, soft labels have been shown to help improve recommendation performance. But how to generate high-quality and confident soft labels from noisy sequential interactions between users and items is still an open question. We propose a new learning framework for sequential recommenders, CSRec, which introduces confident soft labels to provide robust guidance when learning from user-item interactions. CSRec contains a teacher module that generates high-quality and confident soft labels and a student module that acts as the target recommender and is trained on the combination of dense, soft labels and sparse, one-hot labels. We propose and compare three approaches to constructing the teacher module: (i) model-level, (ii) data-level, and (iii) training-level. To evaluate the effectiveness and generalization ability of CSRec, we conduct experiments using various state-of-the-art sequential recommendation models as the target student module on four benchmark datasets. Our experimental results demonstrate that CSRec is effective in training better performing sequential recommenders.

Keywords

Cite

@article{arxiv.2311.02446,
  title  = {Learning Robust Sequential Recommenders through Confident Soft Labels},
  author = {Shiguang Wu and Xin Xin and Pengjie Ren and Zhumin Chen and Jun Ma and Maarten de Rijke and Zhaochun Ren},
  journal= {arXiv preprint arXiv:2311.02446},
  year   = {2023}
}
R2 v1 2026-06-28T13:11:37.832Z