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Comparison Between Support Vector Machine with Polynomial and RBF Kernels Performance in Recognizing EEG Signals of Dyslexic Children

机译:具有多项式和RBF核心性能的支持向量机之间的比较识别缺血儿童脑电图

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Dyslexia is seen as learning disorder that causes learners having difficulties to recognize the word, be fluent in reading and to write accurately. This is characterized by a deficit in the region associated with learning pathways in the brain. Activities in this region can be investigated using electroencephalogram (EEG). In this work, Discrete Wavelet Transform (DWT) with Daubechies order of 2 (db2) based features extraction was applied to the EEG signal and the power is calculated. The differences between beta and theta band with responding to learning activities were explored. Multiclass Support Vector Machine (SVM) was used to classify the EEG signal. Performance comparison of Polynomial and Radial Basis Function (RBF) kernel recognizing EEG signal during writing word and non-word is presented in this paper. It was found that SVM with RBF kernel performance was generally higher than that of the polynomial kernel in recognizing normal, poor and capable dyslexic children. The SVM with RBF kernel produced 91% accuracy compared to the polynomial kernel.
机译:诵读障碍被视为学习障碍,导致学习者有困难识别这个词,精通阅读并准确地写作。这的特征在于与大脑中的学习途径相关联的区域中的缺陷。可以使用脑电图(EEG)来研究该地区的活动。在这项工作中,将基于2(DB2)特征提取的Daubechies order的离散小波变换(DWT)应用于EEG信号,并计算电力。探索了Beta和Theta乐队之间的差异,并响应学习活动。 Multiclass支持向量机(SVM)用于分类EEG信号。本文提出了多项式和径向基函数(RBF)内核识别EEG信号的性能比较和非词汇。发现具有RBF核性性能的SVM通常高于识别正常,贫困和能干功能性儿童的多项式内核。与多项式内核相比,具有RBF内核的SVM产生91%的精度。

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