Distributional semantic models for the evaluation of disordered language
Masoud Rouhizadeh, Emily Prud'hommeaux, Brian Roark and Jan van Santen
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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