Distributional semantic models for the evaluation of disordered language.

Masoud Rouhizadeh, Emily Prud'hommeaux, Brian Roark, Jan van Santen
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Abstract

Atypical semantic and pragmatic expression is frequently reported in the language of children with autism. Although this atypicality often manifests itself in the use of unusual or unexpected words and phrases, the rate of use of such unexpected words is rarely directly measured or quantified. In this paper, we use distributional semantic models to automatically identify unexpected words in narrative retellings by children with autism. The classification of unexpected words is sufficiently accurate to distinguish the retellings of children with autism from those with typical development. These techniques demonstrate the potential of applying automated language analysis techniques to clinically elicited language data for diagnostic purposes.

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无序语言评价的分布语义模型。
非典型语义和语用表达在自闭症儿童的语言中经常被报道。尽管这种非典型性经常表现在使用不寻常或意想不到的单词和短语上,但这些意想不到的单词的使用频率很少被直接测量或量化。本文采用分布语义模型对自闭症儿童复述中的意外词进行自动识别。对意外单词的分类足够准确,可以区分自闭症儿童和正常发育儿童的复述。这些技术展示了将自动语言分析技术应用于临床提取的语言数据以用于诊断目的的潜力。
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