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Comparison of Extreme Learning Machine and K-Nearest Neighbour Performance in Classifying EEG Signal of Normal, Poor and Capable Dyslexic Children

机译:极限学习机和K近邻在正常,贫困和有能力的阅读障碍儿童脑电信号分类中的比较

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Dyslexia is a specific learning difficulty associated with brain capability in processing numbers and letters. Analysis of Electroencephalogram (EEG) could provide insight information on differences in brain processing. In this work, two machine learning techniques were applied to distinguish EEG signals of normal, poor and capable dyslexic children during writing word and non-word. The performance of k-nearest neighbour (KNN) with correlation distance function and extreme learning machine (ELM) with radial basis function (RBF) were compared. The performance of each classifier was determined using sensitivity, specificity and accuracy. It was found that ELM was capable of classifying the dyslexic children with 89% accuracy compared to KNN which is only 83%. These results showed that ELM is feasible and reliable in recognising normal, poor and capable dyslexic children through writing.
机译:诵读困难是与大脑处理数字和字母的能力有关的特定学习困难。脑电图(EEG)分析可以提供有关大脑处理差异的见解信息。在这项工作中,应用了两种机器学习技术来区分正常,贫穷和有能力的阅读障碍儿童在书写单词和非单词时的脑电信号。比较了具有相关距离函数的k最近邻(KNN)和具有径向基函数(RBF)的极限学习机(ELM)的性能。使用敏感性,特异性和准确性来确定每个分类器的性能。结果发现,与只有83%的KNN相比,ELM能够以89%的准确度对阅读障碍儿童进行分类。这些结果表明,ELM在通过书写识别正常,贫困和有能力的阅读障碍儿童方面是可行和可靠的。

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