使用gan进行数据增强的阅读障碍稳健准确的筛选工具

Thomais Asvestopoulou, Victoria Manousaki, A. Psistakis, Erjona Nikolli, Vassilios Andreadakis, I. Aslanides, Yannis Pantazis, Ioannis Smyrnakis, M. Papadopouli
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引用次数: 4

摘要

阅读过程中的眼球运动可以帮助我们了解阅读障碍。我们开发了DysLexML,这是一种针对发展性阅读障碍的筛查工具,基于各种ML算法,分析儿童在默读期间通过眼球追踪记录的凝视点。我们比较评估其性能使用测量收集从两个系统的现场研究221名参与者。本文介绍了DysLexML及其性能。它识别具有突出预测能力的特征并执行降维。具体来说,它使用线性支持向量机实现了最佳性能,使用较小的特征集,准确率分别为97%和84%。我们发现DysLexML在存在噪声的情况下也具有鲁棒性。这些令人鼓舞的结果为在更少控制、更大规模的环境中开发筛查工具奠定了基础,这些工具使用廉价的眼球追踪器,有可能惠及更大的人群进行早期干预。与其他相关研究不同的是,DysLexML仅通过使用少量选定的特征来实现上述性能,这些特征已被认为具有突出的预测能力。最后,我们开发了一种新的基于gan的数据增强/替换技术,用于生成与原始分布相似的合成数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Robust and Accurate Screening Tool for Dyslexia with Data Augmentation using GANs
Eye movements during text reading can provide insights about reading disorders. We developed the DysLexML, a screening tool for developmental dyslexia, based on various ML algorithms that analyze gaze points recorded via eye-tracking during silent reading of children. We comparatively evaluated its performance using measurements collected from two systematic field studies with 221 participants in total. This work presents DysLexML and its performance. It identifies the features with prominent predictive power and performs dimensionality reduction. Specifically, it achieves its best performance using linear SVM, with an accuracy of 97% and 84% respectively, using a small feature set. We show that DysLexML is also robust in the presence of noise. These encouraging results set the basis for developing screening tools in less controlled, larger-scale environments, with inexpensive eye-trackers, potentially reaching a larger population for early intervention. Unlike other related studies, DysLexML achieves the aforementioned performance by employing only a small number of selected features, that have been identified with prominent predictive power. Finally, we developed a new data augmentation/substitution technique based on GANs for generating synthetic data similar to the original distributions.
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