对使用基因大语言模型进行自动语音识别的评价
Evaluation of Automatic Speech Recognition Using Generative Large Language Models
作者
Authors
Thibault Bañeras-Roux | Shashi Kumar | Driss Khalil | Sergio Burdisso | Petr Motlicek | Shiran Liu | Mickael Rouvier | Jane Wottawa | Richard Dufour
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2026
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📝 摘要
Abstract
Automatic Speech Recognition (ASR) is traditionally evaluated using Word Error Rate (WER), a metric that is insensitive to meaning. Embedding-based semantic metrics are better correlated with human perception, but decoder-based Large Language Models (LLMs) remain underexplored for this task. This paper evaluates their relevance through three approaches: (1) selecting the best hypothesis between two candidates, (2) computing semantic distance using generative embeddings, and (3) qualitative classification of errors. On the HATS dataset, the best LLMs achieve 92--94\% agreement with human annotators for hypothesis selection, compared to 63\% for WER, also outperforming semantic metrics. Embeddings from decoder-based LLMs show performance comparable to encoder models. Finally, LLMs offer a promising direction for interpretable and semantic ASR evaluation.
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