English

Graph-Based Model-Agnostic Data Subsampling for Recommendation Systems

Information Retrieval 2023-06-19 v2 Machine Learning Social and Information Networks

Abstract

Data subsampling is widely used to speed up the training of large-scale recommendation systems. Most subsampling methods are model-based and often require a pre-trained pilot model to measure data importance via e.g. sample hardness. However, when the pilot model is misspecified, model-based subsampling methods deteriorate. Since model misspecification is persistent in real recommendation systems, we instead propose model-agnostic data subsampling methods by only exploring input data structure represented by graphs. Specifically, we study the topology of the user-item graph to estimate the importance of each user-item interaction (an edge in the user-item graph) via graph conductance, followed by a propagation step on the network to smooth out the estimated importance value. Since our proposed method is model-agnostic, we can marry the merits of both model-agnostic and model-based subsampling methods. Empirically, we show that combing the two consistently improves over any single method on the used datasets. Experimental results on KuaiRec and MIND datasets demonstrate that our proposed methods achieve superior results compared to baseline approaches.

Keywords

Cite

@article{arxiv.2305.16391,
  title  = {Graph-Based Model-Agnostic Data Subsampling for Recommendation Systems},
  author = {Xiaohui Chen and Jiankai Sun and Taiqing Wang and Ruocheng Guo and Li-Ping Liu and Aonan Zhang},
  journal= {arXiv preprint arXiv:2305.16391},
  year   = {2023}
}

Comments

KDD 2023, fix typo

R2 v1 2026-06-28T10:46:41.600Z