ReaSeq: Unleashing World Knowledge via Reasoning for Sequential Modeling
Abstract
Industrial recommender systems face two fundamental limitations under the log-driven paradigm: (1) knowledge poverty in ID-based item representations that causes brittle interest modeling under data sparsity, and (2) systemic blindness to beyond-log user interests that constrains model performance within platform boundaries. These limitations stem from an over-reliance on shallow interaction statistics and close-looped feedback while neglecting the rich world knowledge about product semantics and cross-domain behavioral patterns that Large Language Models have learned from vast corpora. To address these challenges, we introduce ReaSeq, a reasoning-enhanced framework that leverages world knowledge in Large Language Models to address both limitations through explicit and implicit reasoning. Specifically, ReaSeq employs explicit Chain-of-Thought reasoning via multi-agent collaboration to distill structured product knowledge into semantically enriched item representations, and latent reasoning via Diffusion Large Language Models to infer plausible beyond-log behaviors. Deployed on Taobao's ranking system serving hundreds of millions of users, ReaSeq achieves substantial gains: >6.0% in IPV and CTR, >2.9% in Orders, and >2.5% in GMV, validating the effectiveness of world-knowledge-enhanced reasoning over purely log-driven approaches.
Cite
@article{arxiv.2512.21257,
title = {ReaSeq: Unleashing World Knowledge via Reasoning for Sequential Modeling},
author = {Jiakai Tang and Chuan Wang and Gaoming Yang and Han Wu and Jiahao Yu and Jian Wu and Jianwu Hu and Junjun Zheng and Longbin Li and Shuwen Xiao and Xiangheng Kong and Yeqiu Yang and Yuning Jiang and Ahjol Nurlanbek and Binbin Cao and Bo Zheng and Fangmei Zhu and Gaoming Zhou and Huimin Yi and Huiping Chu and Jin Huang and Jinzhe Shan and Kenan Cui and Longbin Li and Silu Zhou and Wen Chen and Xia Ming and Xiang Gao and Xin Yao and Xingyu Wen and Yan Zhang and Yiwen Hu and Yulin Wang and Ziheng Bao and Zongyuan Wu},
journal= {arXiv preprint arXiv:2512.21257},
year = {2025}
}