基于转换器的神经非典型语言模型的性能评估。

Duanchen Liu, Zoey Liu, Qingyun Yang, Yujing Huang, Emily Prud'hommeaux
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引用次数: 0

摘要

语言社交方面的困难是自闭症谱系障碍(ASD)的特征之一。这些沟通差异被认为是导致自闭症成年人在找工作时遇到挑战的原因,强调需要采取干预措施,重点改善实用主义和社交语言方面的弱点。在本文中,我们描述了一个基于转换的框架,用于识别与沟通的社会方面相关的语言特征,该框架使用的是在参与协作任务时产生的有或没有ASD的成年人与神经正常对话伙伴之间的对话语料库。虽然我们的框架总体上具有很强的准确性,但自闭症谱系障碍参与者的语言表现明显更差,这表明他们在某些社会语言功能上使用了一套更多样化的策略。这些结果,虽然显示了自动化语言分析工具的发展前景,以支持针对ASD的有针对性的语言干预,但也揭示了大型情境化语言模型模拟神经非典型语言能力的弱点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the Performance of Transformer-based Language Models for Neuroatypical Language.

Difficulties with social aspects of language are among the hallmarks of autism spectrum disorder (ASD). These communication differences are thought to contribute to the challenges that adults with ASD experience when seeking employment, underscoring the need for interventions that focus on improving areas of weakness in pragmatic and social language. In this paper, we describe a transformer-based framework for identifying linguistic features associated with social aspects of communication using a corpus of conversations between adults with and without ASD and neurotypical conversational partners produced while engaging in collaborative tasks. While our framework yields strong accuracy overall, performance is significantly worse for the language of participants with ASD, suggesting that they use a more diverse set of strategies for some social linguistic functions. These results, while showing promise for the development of automated language analysis tools to support targeted language interventions for ASD, also reveal weaknesses in the ability of large contextualized language models to model neuroatypical language.

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