English

Addressing Cold-start Problem in Click-Through Rate Prediction via Supervised Diffusion Modeling

Information Retrieval 2025-04-10 v1 Artificial Intelligence

Abstract

Predicting Click-Through Rates is a crucial function within recommendation and advertising platforms, as the output of CTR prediction determines the order of items shown to users. The Embedding \& MLP paradigm has become a standard approach for industrial recommendation systems and has been widely deployed. However, this paradigm suffers from cold-start problems, where there is either no or only limited user action data available, leading to poorly learned ID embeddings. The cold-start problem hampers the performance of new items. To address this problem, we designed a novel diffusion model to generate a warmed-up embedding for new items. Specifically, we define a novel diffusion process between the ID embedding space and the side information space. In addition, we can derive a sub-sequence from the diffusion steps to expedite training, given that our diffusion model is non-Markovian. Our diffusion model is supervised by both the variational inference and binary cross-entropy objectives, enabling it to generate warmed-up embeddings for items in both the cold-start and warm-up phases. Additionally, we have conducted extensive experiments on three recommendation datasets. The results confirmed the effectiveness of our approach.

Keywords

Cite

@article{arxiv.2504.06270,
  title  = {Addressing Cold-start Problem in Click-Through Rate Prediction via Supervised Diffusion Modeling},
  author = {Wenqiao Zhu and Lulu Wang and Jun Wu},
  journal= {arXiv preprint arXiv:2504.06270},
  year   = {2025}
}
R2 v1 2026-06-28T22:51:12.876Z