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Detecting linguistic idiosyncratic interests in autism using distributional semantic models

机译:使用分布语义模型检测自闭症中的语言特质兴趣

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Children with autism spectrum disorder often exhibit idiosyncratic patterns of behaviors and interests. In this paper, we focus on measuring the presence of idiosyncratic interests at the linguistic level in children with autism using distributional semantic models. We model the semantic space of children's narratives by calculating pairwise word overlap, and we compare the overlap found within and across diagnostic groups. We find that the words used by children with typical development tend to be used by other children with typical development, while the words used by children with autism overlap less with those used by children with typical development and even less with those used by other children with autism. These findings suggest that children with autism are veering not only away from the topic of the target narrative but also in idiosyncratic semantic directions potentially defined by their individual topics of interest.
机译:自闭症谱系障碍儿童通常表现出行为和兴趣的特质模式。在本文中,我们专注于使用分布语义模型在自闭症儿童的语言水平上测量特质兴趣的存在。我们通过计算成对单词重叠来对儿童叙述的语义空间进行建模,并比较诊断组内和诊断组之间的重叠。我们发现,具有典型发育能力的儿童使用的单词倾向于被其他具有典型发育能力的儿童使用,而自闭症儿童使用的单词与具有典型发育能力的儿童使用的单词重叠较少,而与具有其他发育能力的儿童使用的单词较少重叠自闭症。这些发现表明,自闭症儿童不仅转向目标叙述的主题,而且转向可能由他们感兴趣的主题定义的特质语义方向。

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