WWW2026

LSIG: Long Semantic IDs for Generative Recommendation

Zhao Li, Fengyang Qi, Chuanyu Xu, Tao Zhang, Chengfu Huo, Peng Zhang

Abstract

Semantic ID-based generative recommendation represents items as sequences of discrete tokens, but it inherently faces a tradeoff between representational expressiveness and computational efficiency. Residual Quantization (RQ)-based approaches restrict semantic IDs to be short to enable tractable sequential modeling, while Optimized Product Quantization (OPQ)-based methods compress long semantic IDs through naive rigid aggregation, inevitably discarding fine-grained semantic information. To resolve this dilemma, we propose ACERec, a novel framework that decouples the granularity gap between fine-grained tokenization and efficient sequential modeling. It employs an Attentive Token Merger to distill long expressive semantic tokens into compact latents and introduces a dedicated Intent Token serving as a dynamic prediction anchor. To capture cohesive user intents, we guide the learning process via a dual-granularity objective, harmonizing fine-grained token prediction with global item-level semantic alignment. Extensive experiments on six real-world benchmarks demonstrate that ACERec consistently outperforms state-of-theart baselines, achieving an average improvement of 14.40% in NDCG@10, effectively reconciling semantic expressiveness and computational efficiency. CCS CONCEPTS • Information systems → Recommender systems.