Predicting pragmatic discourse features in the language of adults with autism spectrum disorder.

Christine Yang, Duanchen Liu, Qingyun Yang, Zoey Liu, Emily Prud'hommeaux
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引用次数: 2

Abstract

Individuals with autism spectrum disorder (ASD) experience difficulties in social aspects of communication, but the linguistic characteristics associated with deficits in discourse and pragmatic expression are often difficult to precisely identify and quantify. We are currently collecting a corpus of transcribed natural conversations produced in an experimental setting in which participants with and without ASD complete a number of collaborative tasks with their neurotypical peers. Using this dyadic conversational data, we investigate three pragmatic features - politeness, uncertainty, and informativeness - and present a dataset of utterances annotated for each of these features on a three-point scale. We then introduce ongoing work in developing and training neural models to automatically predict these features, with the goal of identifying the same between-groups differences that are observed using manual annotations. We find the best performing model for all three features is a feedforward neural network trained with BERT embeddings. Our models yield higher accuracy than ones used in previous approaches for deriving these features, with F1 exceeding 0.82 for all three pragmatic features.

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自闭症谱系障碍成人语用语篇特征预测。
自闭症谱系障碍(ASD)患者在社交方面存在沟通困难,但与话语和语用表达缺陷相关的语言特征往往难以精确识别和量化。我们目前正在收集在实验环境中产生的转录自然对话的语料库,在实验环境中,有和没有ASD的参与者与他们的神经正常的同伴完成了许多合作任务。使用这种二元会话数据,我们研究了三个语用特征——礼貌、不确定性和信息性——并给出了一个三分制的话语数据集,对这些特征中的每一个都进行了注释。然后,我们介绍了正在进行的开发和训练神经模型的工作,以自动预测这些特征,目标是识别使用手动注释观察到的相同组间差异。我们发现这三个特征的最佳表现模型是用BERT嵌入训练的前馈神经网络。我们的模型比以前用于导出这些特征的方法产生更高的精度,所有三个实用特征的F1都超过0.82。
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