Detection of Mental State from EEG Signal Data: An Investigation with Machine Learning Classifiers

A. Rahman, Muntequa Imtiaz Siraji, Lamim Ibtisam Khalid, Fahim Faisal, M. M. Nishat, Mohammad Tausiful Islam, Nchouwat Ndumgouo Ibrahim moubarak
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引用次数: 15

Abstract

The mental state of a person is a combination of very complex neural activities which determine the current state of mind. It depends on a lot of external factors as well as internal factors of the brain itself. It is possible to determine an individual's mental state by analyzing their EEG patterns. Using a dataset acquired from Kaggle, ten machine learning techniques were investigated and models were built. The RandomSearchCV method was used to perform hyperparameter tuning and a comparative study has been portrayed for both tuning and without tuning of hyperparameter. After evaluating the performance parameters, Support Vector Machine (SVM) displayed the best accuracy (95.36%). However, Gradient Boosting (GrB) depicted promising accuracy of 95.24% whereas K-Nearest Neighbors (KNN) and XGBoost (XGB) both depicted 93.10% accuracy. As a result, with effective integration of the ML-based detection method, it is likely to regulate a person's state of mind, which will enable to develop a better understanding of human psychology and forecast their actions.
从脑电信号数据中检测精神状态:基于机器学习分类器的研究
一个人的精神状态是非常复杂的神经活动的组合,它决定了当前的精神状态。这取决于很多外部因素以及大脑本身的内部因素。通过分析脑电图模式来确定一个人的精神状态是可能的。利用从Kaggle获得的数据集,研究了十种机器学习技术并建立了模型。使用RandomSearchCV方法进行超参数调优,并对超参数调优和不调优进行了比较研究。通过对性能参数的评价,支持向量机(SVM)的准确率最高,达到95.36%。梯度增强(GrB)的准确率为95.24%,而k近邻增强(KNN)和XGBoost (XGB)的准确率均为93.10%。因此,通过有效整合基于ml的检测方法,有可能调节人的心理状态,从而更好地了解人的心理并预测其行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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