Modeling Item-Level Dynamic Variability with Residual Diffusion for Bundle Recommendation

Authors

  • Dong Zhang Wuhan University of Technology
  • Lin Li Wuhan University of Technology
  • Ming Li Wuhan University of Technology York University, Canada
  • Amran Bhuiyan York University
  • Meng Sun Wuhan University of Technology
  • Xiaohui Tao University of Southern Queensland
  • Jimmy Huang York University

DOI:

https://doi.org/10.1609/aaai.v40i19.38662

Abstract

Existing solutions for bundle recommendation (BR) have achieved remarkable effectiveness for predicting the user’s preference for prebuilt bundles. However, bundle-item (B-I) affiliation will vary dynamically in real scenarios. For ex ample, a bundle themed as ‘casual outfit’ may add ‘hat’ or remove ‘watch’ due to factors such as seasonal variations, changes in user preferences or inventory adjustments. Our empirical study demonstrates that the performance of main stream BR models may fluctuate or decline under item-level variability. This paper makes the first attempt to address the above problem and proposes Residual Diffusion for Bundle Recommendation (RDiffBR) as a model-agnostic generative framework which can assist a BR model in adapting this sce nario. During the initial training of the BR model, RDiffBR employs a residual diffusion model to process the item-level bundle embeddings which are generated by the BR model to represent bundle theme via a forward-reverse process. In the inference stage, RDiffBR reverses item-level bundle em beddings obtained by the well-trained bundle model under B-I variability scenarios to generate the effective item-level bundle embeddings. In particular, the residual connection in our residual approximator significantly enhances BR mod els’ ability to generate high-quality item-level bundle embed dings. Experiments on six BRmodelsandfourpublicdatasets from different domains show that RDiffBR improves the per formance of Recall and NDCG of backbone BR models by up to 23%, while only increases training time about 4%.

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Published

2026-03-14

How to Cite

Zhang, D., Li, L., Li, M., Bhuiyan, A., Sun, M., Tao, X., & Huang, J. (2026). Modeling Item-Level Dynamic Variability with Residual Diffusion for Bundle Recommendation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(19), 16253–16261. https://doi.org/10.1609/aaai.v40i19.38662

Issue

Section

AAAI Technical Track on Data Mining & Knowledge Management III