Coding the accuracy of typed transcripts from experiments testing speech intelligibility is an arduous endeavour. A recent study in this journal [Herrmann, B. 2025. Leveraging natural language processing models to automate speech-intelligibility scoring. Speech, Language and Hearing, 28(1)] presents a novel approach for automating the scoring of such listener transcripts, leveraging Natural Language Processing (NLP) models. It involves the calculation of the semantic similarity between transcripts and target sentences using high-dimensional vectors, generated by such NLP models as ADA2, GPT2, BERT, and USE. This approach demonstrates exceptional accuracy, with negligible underestimation of intelligibility scores (by about 2-4%), numerically outperforming simpler computational tools like Autoscore and TSR. The method uniquely relies on semantic representations generated by large language models. At the same time, these models also form the Achilles heel of the technique: the transparency, accessibility, data security, ethical framework, and cost of the selected model directly impact the suitability of the NLP-based scoring method. Hence, working with such models can raise serious risks regarding the reproducibility of scientific findings. This in turn emphasises the need for fair, ethical, and evidence-based open source models. With such models, Herrmann's new tool represents a valuable addition to the speech scientist's toolbox.
Keywords: Speech intelligibility; artificial intelligence; automated scoring; large language models; listener transcripts; manual assessment; natural language processing; reproducibility.
© 2025 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.