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Style-agnostic evaluation of ASR using multiple reference transcripts

Authors :
McNamara, Quinten
Fernández, Miguel Ángel del Río
Bhandari, Nishchal
Ratajczak, Martin
Chen, Danny
Miller, Corey
Jetté, Migüel
Publication Year :
2024

Abstract

Word error rate (WER) as a metric has a variety of limitations that have plagued the field of speech recognition. Evaluation datasets suffer from varying style, formality, and inherent ambiguity of the transcription task. In this work, we attempt to mitigate some of these differences by performing style-agnostic evaluation of ASR systems using multiple references transcribed under opposing style parameters. As a result, we find that existing WER reports are likely significantly over-estimating the number of contentful errors made by state-of-the-art ASR systems. In addition, we have found our multireference method to be a useful mechanism for comparing the quality of ASR models that differ in the stylistic makeup of their training data and target task.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.07937
Document Type :
Working Paper