ARCHIVES
Detection of Depression using Various Machine Learning and Deep Learning Techniques: A Review
Published Online: March-April 2026
Pages: 38-46
Cite this article
↗ https://www.doi.org/10.59256/ijire.20260702005Abstract
Thoughts of suicide are sometimes prompted by depression and other mental illnesses, which continues to be a major issue in society. Scientists have been working on algorithms that can accurately detect depression in its early stages. Numerous investigations have previously been suggested. This study examines the research conducted to date on the use of approaches for the early diagnosis of depression by analyzing several previous studies based on deep learning and artificial intelligence (AI). Additional methods of identifying emotions are also covered, including the analysis of words on social media platforms, emotional chatbots, and facial expressions. Various techniques are utilized to recognize emotions for the purpose of detecting depression, such as Naive-Bayes, Support Vector Machines (SVM), Logistic Regression, etc. The goal of this paper is to examine different methods that aid in the early diagnosis of depression and the associated research questions
Related Articles
2026
AI-Based Stomach Cancer Detection Using Biomarkers, Medical Images, and Voice Analysis
2026
Hydrogen-Efficient Eco-Driving and Route Planning for Fuel-Cell Electric Vehicles Using Multi-Objective Optimization Under Traffic and Terrain Uncertainty
2026
A Data-Driven Machine Learning Framework for Assessing Patent Commercial Value and Technological Significance
2026
Evaluating Student Academic Performance Through a Benchmark of Fuzzy Reasoning Models
2026
A Hybrid Soft Computing Approach for Managing Uncertainty in Data Analytics
2026