Depression is a common illness worldwide with potentially severe implications. Early identification of depressive symptoms is a crucial first step towards assessment, intervention, and relapse prevention. With an increase in data sets with relevance for depression, and the advancement of machine learning, there is a potential to develop intelligent systems to detect symptoms of depression in written material. This work proposes an efficient approach using Long Short-Term Memory (LSTM)-based Recurrent Neural Network (RNN) to identify texts describing self-perceived symptoms of depression. The approach is applied on a large dataset from a public online information channel for young people in Norway. The dataset consists of youth’s own text-ba...
The ability to explain why the model produced results in such a way is an important problem, especia...
This paper proposes a proactive method to detect the clinical depression affected person from post a...
In social media, depression identification could be regarded as a complex task because of the compli...
Depression is a common illness worldwide with potentially severe implications. Early identification ...
Depression is a prevalent sickness, spreading worldwide with potentially serious implications. Timel...
Social media consumes a greate time of our dialy times that generate a significant amount of informa...
Predicting depression can mitigate tragedies. Numerous works have been proposed so far using machine...
Depression is a mental disorder that affects more than 300 million people worldwide. An individual s...
Twitter is currently a popular online social media platform which allows users to share their user-g...
Background As depression is the leading cause of disability worldwide, large-scale surveys have been...
[EN] This paper summarizes the contributions of the PRHLT- UPV team as a participant in the eRisk 20...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Depression is the most prevalent and serious mental illness, which induces grave financial and socie...
Depression is a common but serious mood disorder. In 2015, WHO reports about 322 million people were...
Depression is a common mental health disorder that affects an individual’s moods, thought processes ...
The ability to explain why the model produced results in such a way is an important problem, especia...
This paper proposes a proactive method to detect the clinical depression affected person from post a...
In social media, depression identification could be regarded as a complex task because of the compli...
Depression is a common illness worldwide with potentially severe implications. Early identification ...
Depression is a prevalent sickness, spreading worldwide with potentially serious implications. Timel...
Social media consumes a greate time of our dialy times that generate a significant amount of informa...
Predicting depression can mitigate tragedies. Numerous works have been proposed so far using machine...
Depression is a mental disorder that affects more than 300 million people worldwide. An individual s...
Twitter is currently a popular online social media platform which allows users to share their user-g...
Background As depression is the leading cause of disability worldwide, large-scale surveys have been...
[EN] This paper summarizes the contributions of the PRHLT- UPV team as a participant in the eRisk 20...
Social network and microblogging sites such as Twitter are widespread amongst all generations nowada...
Depression is the most prevalent and serious mental illness, which induces grave financial and socie...
Depression is a common but serious mood disorder. In 2015, WHO reports about 322 million people were...
Depression is a common mental health disorder that affects an individual’s moods, thought processes ...
The ability to explain why the model produced results in such a way is an important problem, especia...
This paper proposes a proactive method to detect the clinical depression affected person from post a...
In social media, depression identification could be regarded as a complex task because of the compli...