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Classification of intelligence quotient using EEG sub-band power ratio and ANN during mental task

机译:脑任务中使用脑电子带功率比和人工神经网络对智商进行分类

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It has been a long debate on conventional psychometric test as benchmark of individual's intelligence quotient (IQ). However, recent studies in a variety of neurophysiological researches have been done to link intelligence with individual's brainwave pattern. Hence this paper proposes an intelligent approach to classify IQ via brainwave sub-band power ratio and artificial neural network (ANN). Fifty samples of electroencephalogram (EEG) dataset have been collected during IQ test session. Three IQ levels have been categorized based on the IQ scores from Raven's Progressive Matrices as the control group. Left hemispheric brainwave focusing on theta, alpha and beta sub-bands are the key discussion of this paper. The features are used as input to train the ANN. Formerly, synthetic data have also been generated with white Gaussian noise to increase the performance of the classifier. Subsequently, the network model have been developed using an ANN that is trained with optimized parameters which are learning rate, momentum constant and hidden neurons. The network model trained with back-propagation algorithm has yielded low mean squared error (MSE). Findings also indicate that the distinct intelligence quotient levels can be classified with 97.62% training and 94.44% testing accuracies via brainwave sub-band power ratio.
机译:关于传统的心理测验作为个人智力商(IQ)的基准,这是一个长期的争论。然而,已经进行了各种神经生理学研究中的最新研究,以将智力与个人的脑电波模式联系起来。因此,本文提出了一种通过脑电波子带功率比和人工神经网络(ANN)对智商进行分类的智能方法。智商测试期间收集了50个脑电图(EEG)数据集样本。根据来自Raven的渐进矩阵作为对照组的IQ分数,已将三个IQ级别进行了分类。专注于θ,α和β子带的左半球脑电波是本文的重点讨论。这些功能用作训练ANN的输入。以前,还使用白高斯噪声生成合成数据以提高分类器的性能。随后,使用人工神经网络开发了网络模型,该人工神经网络使用优化的参数进行训练,这些参数包括学习率,动量常数和隐藏神经元。用反向传播算法训练的网络模型产生了低均方误差(MSE)。研究结果还表明,可以通过脑波子带功率比将不同的智商水平分为97.62%的训练和94.44%的测试准确度。

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