What Makes a Good Speech Tokenizer for LLM-Centric Speech Generation? A Systematic Study

Authors

  • Xiaoran Fan Fudan University
  • Zhichao Sun Fudan University
  • Yangfan Gao Fudan University
  • Jingfei Xiong Fudan University
  • Hang Yan Shanghai Qiji Zhifeng Co., Ltd
  • Yifei Cao Fudan University
  • Jiajun Sun Fudan University
  • Shuo Li Fudan University
  • Zhihao Zhang Fudan University
  • Zhiheng Xi Fudan University
  • Yuhao Zhou Fudan University
  • Senjie Jin Fudan University
  • Changhao Jiang Fudan University
  • Junjie Ye Fudan University
  • Ming Zhang Fudan University
  • Rui Zheng Shanghai Qiji Zhifeng Co., Ltd
  • Zhenhua Han Shanghai Qiji Zhifeng Co., Ltd
  • Yunke Zhang Honor Device Co., Ltd
  • Demei Yan Honor Device Co., Ltd
  • Shaokang Dong Honor Device Co., Ltd
  • Tao Ji Fudan University
  • Tao Gui Fudan University Shanghai Innovation Institute

DOI:

https://doi.org/10.1609/aaai.v40i36.40318

Abstract

Speech-language models (SLMs) offer a promising path toward unifying speech and text understanding and generation. However, challenges remain in achieving effective cross-modal alignment and high-quality speech generation. In this work, we systematically investigate the role of speech tokenizer designs in LLM-centric SLMs, augmented by speech heads and speaker modeling. We compare coupled, semi-decoupled, and fully decoupled speech tokenizers under a fair SLM framework and find that decoupled tokenization significantly improves alignment and synthesis quality. To address the information density mismatch between speech and text, we introduce multi-token prediction (MTP) into SLMs, enabling each hidden state to decode multiple speech tokens. This leads to up to 12× faster decoding and a substantial drop in word error rate (from 6.07 to 3.01). Furthermore, we propose a speaker-aware generation paradigm and introduce RoleTriviaQA, a large-scale role-playing knowledge QA benchmark with diverse speaker identities. Experiments demonstrate that our methods enhance both knowledge understanding and speaker consistency.

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Published

2026-03-14

How to Cite

Fan, X., Sun, Z., Gao, Y., Xiong, J., Yan, H., Cao, Y., … Gui, T. (2026). What Makes a Good Speech Tokenizer for LLM-Centric Speech Generation? A Systematic Study. Proceedings of the AAAI Conference on Artificial Intelligence, 40(36), 30629–30637. https://doi.org/10.1609/aaai.v40i36.40318

Issue

Section

AAAI Technical Track on Natural Language Processing I