Extracting information from social media platform for early detection of depression among individuals
Abstract
In our world, 3.8% of the total population is suffering from depression and it is the
fourth major cause of death in 15-29 year olds. It is estimated that more than 75%
of people suffering from it in low and middle income countries receive no treatment.
Also, in these countries, so many people live with such conditions without even
recognizing it because of the lack of proper diagnosis and mental health facilities.
However, a huge chunk of the population is connected and active on different social
media platforms. Detection of depression from social media activities can help in
recognizing the problems in an individual level and in a public health level to know
its prevalence in different demographics. The early prediction of such can help us to
work on the problem before the onset. In our work, we propose to use state of the
art machine learning and deep learning models to provide an efficient early detection
model for diagnosis of such. We hope that it would help individuals and relevant
authorities to find out the illness and its severity for the betterment of global and
regional mental health.