A POI-aware contrastive training framework using LLM-generated near-misses reduces both general and CS-aware error rates by over 2% on cmn-eng and vie-eng code-switching ASR datasets compared to standard LoRA fine-tuning.
Adapting Lan- guage Balance in Code-Switching Speech,
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Contrastive Training with LLM-generated Near-Misses for Robust Code-Switching Speech Recognition
A POI-aware contrastive training framework using LLM-generated near-misses reduces both general and CS-aware error rates by over 2% on cmn-eng and vie-eng code-switching ASR datasets compared to standard LoRA fine-tuning.