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Textual and numerical data fusion for depression detection: a machine learning framework

Mohammad Tarek AzizChittagong University of Engineering and TechnologyTanjim MahmudRangamati Science and Technology UniversityMd. Faisal Bin Abdul AzizComilla UniversityMd Abu Bakar SiddickBeijing Institute of TechnologyM. Nawaz SharifChittagong University of Engineering and TechnologyMohammad Shahadat HossainUniversity of ChittagongKarl AnderssonLulea University of Technology
2025en
ABI

Аннотация

<div class="page" title="Page 1"><div class="layoutArea"><div class="column"><p>Depression, a widespread mood disorder, significantly affects global mental health. To mitigate the risk of recurrence, early detection is crucial. This study explores socioeconomic factors contributing to depression and proposes a novel machine learning (ML)-based framework for its detection. We develop a tailored questionnaire to collect textual and numerical data, followed by rigorous feature selection using methods like backward removal and Pearson’s chi-squared test. A variety of ML algorithms, including random forest (RF), support vector machine (SVM), and logistic regression (LR), are employed to create a predictive classifier. The RF model achieves the highest accuracy of 96.85%, highlighting its effectiveness in identifying depression risk factors. This research advances depression detection by integrating socioeconomic analysis with ML, offering a robust tool for enhancing predictive accuracy and enabling proactive mental health interventions.</p></div></div></div>

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Цитирований: 2Использованных источников: 0