Impact of Feature Selection Techniques on the Performance of Machine Learning Models for Depression Detection Using EEG Data

被引:0
作者
Hassan, Marwa [1 ]
Kaabouch, Naima [1 ]
机构
[1] Univ North Dakota, Artificial Intelligence Res AIR Ctr, Grand Forks, ND 58202 USA
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 22期
关键词
depression detection; feature selection; machine learning; Electroencephalography (EEG); major depressive disorder (MDD);
D O I
10.3390/app142210532
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Major depressive disorder (MDD) poses a significant challenge in mental healthcare due to difficulties in accurate diagnosis and timely identification. This study explores the potential of machine learning models trained on EEG-based features for depression detection. Six models and six feature selection techniques were compared, highlighting the crucial role of feature selection in enhancing classifier performance. This study investigates the six feature selection methods: Elastic Net, Mutual Information (MI), Chi-Square, Forward Feature Selection with Stochastic Gradient Descent (FFS-SGD), Support Vector Machine-based Recursive Feature Elimination (SVM-RFE), and Minimal-Redundancy-Maximal-Relevance (mRMR). These methods were combined with six diverse classifiers: Logistic Regression, Support Vector Machine (SVM), Random Forest, Extreme Gradient Boosting (XGBoost), Categorical Boosting (CatBoost), and Light Gradient Boosting Machine (LightGBM). The results demonstrate the substantial impact of feature selection on model performance. SVM-RFE with SVM achieved the highest accuracy (93.54%) and F1 score (95.29%), followed by Logistic Regression with an accuracy of 92.86% and F1 score of 94.84%. Elastic Net also delivered strong results, with SVM and Logistic Regression both achieving 90.47% accuracy. Other feature selection methods yielded lower performance, emphasizing the importance of selecting appropriate feature selection and machine learning algorithms. These findings suggest that careful selection and application of feature selection techniques can significantly enhance the accuracy of EEG-based depression detection.
引用
收藏
页数:22
相关论文
共 50 条
[41]   Enhancing Credit Scoring Models: Unveiling the Impact of Data Preprocessing and Feature Selection Techniques [J].
Nalic, Jasmina ;
Masetic, Zerina ;
Djedovic, Irfan .
2024 23RD INTERNATIONAL SYMPOSIUM INFOTEH-JAHORINA, INFOTEH, 2024,
[42]   Diagnosis of Bearing Faults Using Temporal Vibration Signals: A Comparative Study of Machine Learning Models with Feature Selection Techniques [J].
Alaa Abdulhady Jaber .
Journal of Failure Analysis and Prevention, 2024, 24 :752-768
[43]   FEATURE SELECTION AND MACHINE LEARNING CLASSIFICATION FOR MALWARE DETECTION [J].
Khammas, Ban Mohammed ;
Monemi, Alireza ;
Bassi, Joseph Stephen ;
Ismail, Ismahani ;
Nor, Sulaiman Mohd ;
Marsono, Muhammad Nadzir .
JURNAL TEKNOLOGI, 2015, 77 (01)
[44]   An Approach to Feature Selection in Intrusion Detection Systems Using Machine Learning Algorithms [J].
Kavitha, G. ;
Elango, N. M. .
INTERNATIONAL JOURNAL OF E-COLLABORATION, 2020, 16 (04) :48-58
[45]   Evaluating Feature Impact Prior to Phylogenetic Analysis Using Machine Learning Techniques [J].
Salman, Osama A. ;
Hosszu, Gabor .
INFORMATION, 2024, 15 (11)
[46]   Network Intrusion Detection using Supervised Machine Learning Technique with Feature Selection [J].
Abu Taher, Kazi ;
Jisan, Billal Mohammed Yasin ;
Rahman, Md. Mahbubur .
2019 1ST INTERNATIONAL CONFERENCE ON ROBOTICS, ELECTRICAL AND SIGNAL PROCESSING TECHNIQUES (ICREST), 2019, :643-646
[47]   Combating Network Intrusions using Machine Learning Techniques with Multilevel Feature Selection Method [J].
Olayinka, Tosin Comfort ;
Ugwu, Chukwuemeka Christian ;
Okhuoya, Omoibu Joseph ;
Adetunmbi, Adebayo Olusola ;
Popoola, Olugbemiga Solomon .
2022 IEEE NIGERIA 4TH INTERNATIONAL CONFERENCE ON DISRUPTIVE TECHNOLOGIES FOR SUSTAINABLE DEVELOPMENT (IEEE NIGERCON), 2022, :589-593
[48]   Comparison of Multiple Feature Selection Techniques for Machine Learning-Based Detection of IoT Attacks [J].
Viet Anh Phan ;
Jerabek, Jan ;
Malina, Lukas .
19TH INTERNATIONAL CONFERENCE ON AVAILABILITY, RELIABILITY, AND SECURITY, ARES 2024, 2024,
[49]   Evaluating the performance of feature selection techniques and machine learning algorithms on future residential water demand [J].
Pourmousavi, Marziyeh ;
Nasrollahi, Hossein ;
Najafabadi, Abdolhamid Amirkaveh ;
Kalhor, Ahmad .
WATER SUPPLY, 2022, 22 (08) :6833-6854
[50]   Monitoring Forest Health Using Hyperspectral Imagery: Does Feature Selection Improve the Performance of Machine-Learning Techniques? [J].
Schratz, Patrick ;
Muenchow, Jannes ;
Iturritxa, Eugenia ;
Cortes, Jose ;
Bischl, Bernd ;
Brenning, Alexander .
REMOTE SENSING, 2021, 13 (23)