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TICL+: A Case Study On Speech In-Context Learning for Children's Speech Recognition

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Children's speech recognition remains challenging due to substantial acoustic and linguistic variability, limited labeled data, and significant differences from adult speech. Speech foundation models can address these challenges through Speech In-Context Learning (SICL), allowing adaptation to new domains without fine-tuning. However, the effectiveness of SICL depends on how in-context examples are selected. We extend an existing retrieval-based method, Text-Embedding KNN for SICL (TICL), introducing an acoustic reranking step to create TICL+. This extension prioritizes examples that are both semantically and acoustically aligned with the test input. Experiments on four children's speech corpora show that TICL+ achieves up to a 53.3% relative word error rate reduction over zero-shot performance and 37.6% over baseline TICL, highlighting the value of combining semantic and acoustic information for robust, scalable ASR in children's speech.

Haolong Zheng, Yekaterina Yegorova, Mark Hasegawa-Johnson• 2025

Related benchmarks

TaskDatasetResultRank
Child's Automatic Speech RecognitionRSR
WER12.19
22
Speech RecognitionMy Science Tutor (MyST)
WER10.17
9
Speech RecognitionOGI Kids’ Speech Corpus
WER (%)7.55
9
Speech RecognitionEdmonton Narrative Norms Instrument (ENNI)
WER11.52
9
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