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Evaluating NLP Features for Automatic Prediction of Language Impairment Using Child Speech Transcripts

机译:评估NLP功能,用于使用儿童语音转录物自动预测语言障碍

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Language impairment (LI) in children is pervasive in all walks of life. Automatic prediction of LI is useful as a first pass for speech language pathologists in identifying prospective children with LI. Previous work in the au-tornatic prediction of LI has explored various features, mostly shallow and surface level features. In this paper, we evaluate deeper Natural Language Processing (NLP) features such as syntactic, semantic and entity grid model features, along with narrative structure and quality features in the prediction of LI using child language transcripts. Our experiments show that narrative structure and quality features along with a combination of other features are helpful in the prediction of LI in storytelling narratives.
机译:儿童中的语言障碍(LI)在各行各业都是普遍存在的普遍存在。 LI的自动预测是用于语音语言病理学家在识别李的前瞻性儿童的首次通行证。以前的工作在李的Au-tornatic预测中探讨了各种特征,大多数浅层和表面级别。在本文中,我们评估了更深层次的自然语言处理(NLP)特征,如句法,语义和实体网格模型特征,以及使用子语言成绩单预测LI的叙事结构和质量特征。我们的实验表明,叙事结构和质量特征以及其他特征的组合在讲故事叙事中的预测方面有助于预测李。

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