English

Leave No Knowledge Behind During Knowledge Distillation: Towards Practical and Effective Knowledge Distillation for Code-Switching ASR Using Realistic Data

Audio and Speech Processing 2024-07-16 v1 Computation and Language Sound

Abstract

Recent advances in automatic speech recognition (ASR) often rely on large speech foundation models for generating high-quality transcriptions. However, these models can be impractical due to limited computing resources. The situation is even more severe in terms of more realistic or difficult scenarios, such as code-switching ASR (CS-ASR). To address this, we present a framework for developing more efficient models for CS-ASR through knowledge distillation using realistic speech-only data. Our proposed method, Leave No Knowledge Behind During Knowledge Distillation (K2^2D), leverages both the teacher model's knowledge and additional insights from a small auxiliary model. We evaluate our approach on two in-domain and two out-domain datasets, demonstrating that K2^2D is effective. By conducting K2^2D on the unlabeled realistic data, we have successfully obtained a 2-time smaller model with 5-time faster generation speed while outperforming the baseline methods and the teacher model on all the testing sets. We have made our model publicly available on Hugging Face (https://huggingface.co/andybi7676/k2d-whisper.zh-en).

Keywords

Cite

@article{arxiv.2407.10603,
  title  = {Leave No Knowledge Behind During Knowledge Distillation: Towards Practical and Effective Knowledge Distillation for Code-Switching ASR Using Realistic Data},
  author = {Liang-Hsuan Tseng and Zih-Ching Chen and Wei-Shun Chang and Cheng-Kuang Lee and Tsung-Ren Huang and Hung-yi Lee},
  journal= {arXiv preprint arXiv:2407.10603},
  year   = {2024}
}
R2 v1 2026-06-28T17:40:59.188Z