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arxiv 2505.16212 v2 pith:APWCBGW5 submitted 2025-05-22 cs.CL eess.AS

Large Language Models based ASR Error Correction for Child Conversations

classification cs.CL eess.AS
keywords llmsspeechoutputschildconversationalfine-tunedchildrencorrecting
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automatic Speech Recognition (ASR) has recently shown remarkable progress, but accurately transcribing children's speech remains a significant challenge. Recent developments in Large Language Models (LLMs) have shown promise in improving ASR transcriptions. However, their applications in child speech including conversational scenarios are underexplored. In this study, we explore the use of LLMs in correcting ASR errors for conversational child speech. We demonstrate the promises and challenges of LLMs through experiments on two children's conversational speech datasets with both zero-shot and fine-tuned ASR outputs. We find that while LLMs are helpful in correcting zero-shot ASR outputs and fine-tuned CTC-based ASR outputs, it remains challenging for LLMs to improve ASR performance when incorporating contextual information or when using fine-tuned autoregressive ASR (e.g., Whisper) outputs.

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