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Learning Clusters in Autism Spectrum Disorder: Image-Based Clustering of Eye-Tracking Scanpaths with Deep Autoencoder

机译:自闭症谱系障碍学习群集:基于图像的群体跟踪扫描路径与深度自身扫描路径

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Autism spectrum disorder (ASD) is a lifelong condition characterized by social and communication impairments. This study attempts to apply unsupervised Machine Learning to discover clusters in ASD. The key idea is to learn clusters based on the visual representation of eye-tracking scanpaths. The clustering model was trained using compressed representations learned by a deep autoencoder. Our experimental results demonstrate a promising tendency of clustering structure. Further, the clusters are explored to provide interesting insights into the characteristics of the gaze behavior involved in autism.
机译:自闭症谱系障碍(ASD)是一种终身状况,其特点是社会和沟通障碍。本研究试图将无监督机器学习应用于ASD中的群集。关键的想法是基于眼跟踪扫描路径的视觉表示来学习群集。使用深度AutoEncoder学习的压缩表示培训群集模型。我们的实验结果表明了聚类结构的有希望的趋势。此外,探讨了集群,以提供有趣的见解,以涉及自闭症所涉及的凝视行为的特征。

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