Academia Open
Vol. 10 No. 2 (2025): December

EEG Schizophrenia Classification with Comparison of Three Machine Learning Algorithms: Klasifikasi Skizofrenia EEG dengan Perbandingan Tiga Algoritma Machine Learning

Elizabeth Juli Angelina Saragi (Program Studi Teknik Informatika, Universitas Prima Indonesia)
Dafid Riswanto Zebua (Program Studi Teknik Informatika, Universitas Prima Indonesia)
Sekarayu Larasati (Program Studi Teknik Informatika, Universitas Prima Indonesia)
Ravi Telaumbanua (Program Studi Teknik Informatika, Universitas Prima Indonesia)
Dhanny Rukmana Manday (Program Studi Teknik Informatika, Universitas Prima Indonesia)



Article Info

Publish Date
16 Jul 2025

Abstract

General Background: Schizophrenia is a chronic mental disorder affecting millions globally, requiring improved diagnostic methods. Specific Background: EEG signals have emerged as promising biomarkers for schizophrenia classification through machine learning. Knowledge Gap: Despite prior advances, no systematic comparison of key machine learning algorithms—Logistic Regression, Random Forest, and Decision Tree—using EEG data for schizophrenia classification has been conducted. Aims: This study aims to compare the performance of these three algorithms in classifying schizophrenia from EEG signals using a dataset of 1932 samples. Results: Random Forest achieved the highest classification accuracy (86%) and AUC (0.912), outperforming Logistic Regression (accuracy 82%, AUC 0.865) and Decision Tree (accuracy 81%, AUC 0.871). Novelty: Unlike previous studies, this research provides a comprehensive algorithmic comparison using EEG-derived features, integrating feature importance, calibration, learning curves, and statistical tests. Implications: The findings establish Random Forest as a robust classifier for EEG-based schizophrenia detection, offering a foundation for developing clinically relevant, cloud-based diagnostic support tools that can facilitate early detection and personalized treatment planning in mental health care.Highlight : Random Forest achieved the highest accuracy and AUC in schizophrenia classification. EEG data were processed using STFT, Wavelet Transform, and Band Power features. Comparison of three algorithms offers a systematic basis for clinical application. Keywords : Machine Learning Classification, Random Forest, Logistic Regression, Decision Tree, Learning Curve

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Journal Info

Abbrev

acopen

Publisher

Subject

Medicine & Pharmacology Public Health

Description

Academia Open is published by Universitas Muhammadiyah Sidoarjo published 2 (two) issues per year (June and December). This journal provides immediate open access to its content on the principle that making research freely available to the public supports a greater global exchange of knowledge. This ...