Journal ArticleUnknown
Depression detection from social network data using machine learning techniques
Author Affiliations
Islamic University of Technology, Charles Sturt University, Swinburne University of Technology, Victoria University
Published InHealth Information Science and Systems
Year2018
Citations459
Abstract
Purpose Social networks have been developed as a great point for its users to communicate with their interested friends and share their opinions, photos, and videos reflecting their moods, feelings and sentiments. This creates an opportunity to analyze social network data for user's feelings and sentiments to investigate their moods and attitudes when they are communicating via these online tools. Methods Although diagnosis of depression using social networks data has picked an established position globally, there are several dimensions that are yet to be detected. In this study, we aim to perform depression analysis on Facebook data collected from an online public source. To investigate the effect of depression detection, we propose machine learning technique as an efficient and scalable…
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