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Journal ArticleOpen Access

Ensemble of hybrid model based technique for early detecting of depression based on SVM and neural networks

Author Affiliations
American International University-Bangladesh, Daffodil International University, King Saud University, Texas A&M University – Kingsville
Published InScientific Reports
Year2024
Citations26

Abstract

The prevalence of depression has increased dramatically over the last several decades: it is frequently overlooked and can have a significant impact on both physical and mental health. Therefore, it is crucial to develop an automated detection system that can instantly identify whether a person is depressed. Currently, machine learning (ML) and artificial neural networks (ANNs) are among the most promising approaches for developing automated computer-based systems to predict several mental health issues, such as depression. This study propose an ensemble of hybrid model-based techniques that aims to build a strong detection model that considers many psychological and sociodemographic characteristics of an individual to detect whether a person is depressed. Support vector machines (SVM) and multilayer perceptrons (MLP) are the…
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