Feb. 6, 2024, 5:55 a.m. | Golara Javadi Kamer Ali Yuksel Yunsu Kim Thiago Castro Ferreira Mohamed Al-Badrashiny

cs.CL updates on arXiv.org arxiv.org

In the realm of automatic speech recognition (ASR), the quest for models that not only perform with high accuracy but also offer transparency in their decision-making processes is crucial. The potential of quality estimation (QE) metrics is introduced and evaluated as a novel tool to enhance explainable artificial intelligence (XAI) in ASR systems. Through experiments and analyses, the capabilities of the NoRefER (No Reference Error Rate) metric are explored in identifying word-level errors to aid post-editors in refining ASR hypotheses. …

accuracy asr automatic speech recognition cs.cl cs.sd decision editing eess.as free making metrics novel processes quality quest recognition reference sampling speech speech recognition through transparency word

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