English

Ensemble knowledge distillation of self-supervised speech models

Audio and Speech Processing 2023-02-27 v1 Computation and Language Sound

Abstract

Distilled self-supervised models have shown competitive performance and efficiency in recent years. However, there is a lack of experience in jointly distilling multiple self-supervised speech models. In our work, we performed Ensemble Knowledge Distillation (EKD) on various self-supervised speech models such as HuBERT, RobustHuBERT, and WavLM. We tried two different aggregation techniques, layerwise-average and layerwise-concatenation, to the representations of different teacher models and found that the former was more effective. On top of that, we proposed a multiple prediction head method for student models to predict different layer outputs of multiple teacher models simultaneously. The experimental results show that our method improves the performance of the distilled models on four downstream speech processing tasks, Phoneme Recognition, Speaker Identification, Emotion Recognition, and Automatic Speech Recognition in the hidden-set track of the SUPERB benchmark.

Keywords

Cite

@article{arxiv.2302.12757,
  title  = {Ensemble knowledge distillation of self-supervised speech models},
  author = {Kuan-Po Huang and Tzu-hsun Feng and Yu-Kuan Fu and Tsu-Yuan Hsu and Po-Chieh Yen and Wei-Cheng Tseng and Kai-Wei Chang and Hung-yi Lee},
  journal= {arXiv preprint arXiv:2302.12757},
  year   = {2023}
}

Comments

Accepted by ICASSP 2023

R2 v1 2026-06-28T08:48:58.801Z