EchoX: Towards Mitigating Acoustic-Semantic Gap via Echo Training for Speech-to-Speech LLMs
Paper
β’
2509.09174
β’
Published
β’
61
πββ¬ Github ο½ π Paper ο½ π Space ο½ π EchoX-Dialougues ο½ π EchoX-Dialogues-Plus
EchoX is a Speech-to-Speech large language model that addresses the acoustic-semantic gap. By introducing Echo Training, EchoX integrates semantic and acoustic learning, mitigating the degradation of reasoning ability observed in existing speech-based LLMs. It is trained on only 10k hours of data while delivering state-of-the-art results in knowledge-based question answering and speech interaction tasks.
Load the EchoX model and run inference with your audio files as shown in the GitHub repository.
@misc{zhang2025echoxmitigatingacousticsemanticgap,
title={EchoX: Towards Mitigating Acoustic-Semantic Gap via Echo Training for Speech-to-Speech LLMs},
author={Yuhao Zhang and Yuhao Du and Zhanchen Dai and Xiangnan Ma and Kaiqi Kou and Benyou Wang and Haizhou Li},
year={2025},
eprint={2509.09174},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2509.09174},
}