Social Media-Based Depressive Disorder Severity Estimation

Publications

Social Media-Based Depressive Disorder Severity Estimation

Year : 2024

Publisher : Springer Science and Business Media Deutschland GmbH

Source Title : Lecture Notes in Networks and Systems

Document Type :

Abstract

One of the more prevalent psychological disorders is depression, and numerous grief individuals contemplate suicide each year. Because people feel embarrassed or inexperienced whether they’re suffering from depressive symptoms, patients with depression generally skip asking for the guidance of licensed mental health professionals, which might lead to an enormous gap in receiving appropriate treatment. In the meantime, research suggests that online social networking data offers helpful information regarding physical and psychological issues. Throughout this paper, we claim that by analyzing online social behaviors, depression might be detected early on. To achieve accurate depression diagnosis, the machine learning technique SVM is utilized, which is innovative in the area of depressive disorder identification. This does not depend on the extraction of numerous or multifaceted characteristics. Once it regards depression identification, algorithms based on machine learning provide several significant benefits over traditional methods of statistical analysis. Basic continuous relationships were rare in depression symptoms. Highly accurate forecasts can be generated by machine learning algorithms as they are capable of learning effectively from complex, irregular structures in data. Despite human feature extraction, which is a time-consuming and laborious action in traditional approaches, these techniques are capable of autonomously retrieving relevant characteristics from huge data sets. Utilized these five algorithms for predicting depression through social media: Support Vector Machine, Artificial Neural Network, Deep Neural Network, CatBoost, and Long Short-Term Memory. Perhaps the most efficient of these methods is the Support Vector Machine.