Papers by Jeremy Davis

1 papers
Extracting Biomedical Entities from Noisy Audio Transcripts (2024.lrec-main)

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Challenge: Named Entity Recognition (NER) is particularly affected by noise, often termed the ASR-NLP gap.
Approach: They propose a dataset to bridge the ASR-NLP gap in the biomedical domain by extracting adverse drug reactions and mentions of entities from the Brief Test of Adult Cognition by Telephone (BTACT) exam.
Outcome: The proposed method can clean 2,000 clean and noisy recordings and eliminate errors using zero-shot and few-shot methods.

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