Détection de stress en utilisant l’apprentissage profond dans les réseaux sociaux
Date
2024
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
UNIVERSITY BBA
Abstract
Emotion analysis and emotional computing have attracted much interest in various research fields in recent decades, particularly with the emergence of problems concerning users' psychological health such as stress, anxiety and depression. To analyze these social media impacts, textual analyzes are particularly effective in identifying characteristics of human behavior and describing emotional state.
In this project, advanced deep learning techniques to analyze social media data are used, in order to understand the emotional signals that present the stress indices expressed in texts. To detect stress in social networks, we analyzed textual data from Twitter and Reddit platforms. Using the LSTM model makes it possible to capture temporal and contextual dependencies in texts, and to accurately identify stressful emotions. Additionally, the LSTM model performance is compared with that of classical methods.
Description
Keywords
Social networks analysis, Stress detection, Deep learning, LSTM, لمات المفتاحية: تحليل الشبكات الاجتماعية، اكتشاف التوتر، التعلم العميق،