English

Semantics Meet Signals: Dual Codebook Representationl Learning for Generative Recommendation

Computation and Language 2025-11-27 v1 Information Retrieval

Abstract

Generative recommendation has recently emerged as a powerful paradigm that unifies retrieval and generation, representing items as discrete semantic tokens and enabling flexible sequence modeling with autoregressive models. Despite its success, existing approaches rely on a single, uniform codebook to encode all items, overlooking the inherent imbalance between popular items rich in collaborative signals and long-tail items that depend on semantic understanding. We argue that this uniform treatment limits representational efficiency and hinders generalization. To address this, we introduce FlexCode, a popularity-aware framework that adaptively allocates a fixed token budget between a collaborative filtering (CF) codebook and a semantic codebook. A lightweight MoE dynamically balances CF-specific precision and semantic generalization, while an alignment and smoothness objective maintains coherence across the popularity spectrum. We perform experiments on both public and industrial-scale datasets, showing that FlexCode consistently outperform strong baselines. FlexCode provides a new mechanism for token representation in generative recommenders, achieving stronger accuracy and tail robustness, and offering a new perspective on balancing memorization and generalization in token-based recommendation models.

Keywords

Cite

@article{arxiv.2511.20673,
  title  = {Semantics Meet Signals: Dual Codebook Representationl Learning for Generative Recommendation},
  author = {Zheng Hui and Xiaokai Wei and Reza Shirkavand and Chen Wang and Weizhi Zhang and Alejandro Peláez and Michelle Gong},
  journal= {arXiv preprint arXiv:2511.20673},
  year   = {2025}
}
R2 v1 2026-07-01T07:54:50.535Z