Applying simple natural language processing methods on social media data have shown to be able to reveal insights of specific mental disorders. However, few studies have employed fine-grained sentiment or emotion related analysis approaches in the detection of mental health conditions from social media messages. This work, for the first time, employed fine-grained emotions as features and examined five popular machine learning classifiers in the task of identifying users with self-reported mental health conditions (i.e. Bipolar, Depression, PTSD, and SAD) from the general public. We demonstrated that the support vector machines and the random forests classifiers with emotion-based features and combined features showed promising improvements...
With the advent of technological advancements and the widespread Internet connectivity during the la...
Background: Mental health problems are widely recognized as a major public health challenge worldwid...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Applying simple natural language processing methods on social media data have shown to be able to re...
Studies have shown that mental illness burdens not only public health and productivity but also esta...
Amidst Covid-19, young adults have experienced major symptoms of anxiety and/or depression disorder ...
[EN] Mental disorders can severely affect quality of life, constitute a major predictive factor of s...
We present our work towards automatic monitoring of major depressive disorder at the population-leve...
Mental disorders such as depression and suicidal ideation are hazardous, affecting more than 300 mil...
This study explores the utilization of social media data, specifically tweets and comments, for gain...
The ubiquity of social media provides a rich opportunity to enhance the data avail-able to mental he...
The world over, mental illness is a serious issue. Many people use the social media that may affect ...
Abstract: Humans' most powerful tool is their mental wellness. Individuals' well-being can be impact...
The Institute for Health Metrics and Evaluation (IHME) has stated that over 1.1 billion people suffe...
A large and growing fraction of the global population uses social media, through which users share t...
With the advent of technological advancements and the widespread Internet connectivity during the la...
Background: Mental health problems are widely recognized as a major public health challenge worldwid...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Applying simple natural language processing methods on social media data have shown to be able to re...
Studies have shown that mental illness burdens not only public health and productivity but also esta...
Amidst Covid-19, young adults have experienced major symptoms of anxiety and/or depression disorder ...
[EN] Mental disorders can severely affect quality of life, constitute a major predictive factor of s...
We present our work towards automatic monitoring of major depressive disorder at the population-leve...
Mental disorders such as depression and suicidal ideation are hazardous, affecting more than 300 mil...
This study explores the utilization of social media data, specifically tweets and comments, for gain...
The ubiquity of social media provides a rich opportunity to enhance the data avail-able to mental he...
The world over, mental illness is a serious issue. Many people use the social media that may affect ...
Abstract: Humans' most powerful tool is their mental wellness. Individuals' well-being can be impact...
The Institute for Health Metrics and Evaluation (IHME) has stated that over 1.1 billion people suffe...
A large and growing fraction of the global population uses social media, through which users share t...
With the advent of technological advancements and the widespread Internet connectivity during the la...
Background: Mental health problems are widely recognized as a major public health challenge worldwid...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...