Recent statistics in suicide prevention show that people are increasingly posting their last words online and with the unprecedented availability of textual data from social media platforms researchers have the opportunity to analyse such data. Furthermore, psychological studies have shown that our state of mind can manifest itself in the linguistic features we use to communicate. In this paper, we investigate whether it is possible to automatically identify suicide notes from other types of social media blogs in two document-level classification tasks. The first task aims to identify suicide notes from depressed and blog posts in a balanced dataset, whilst the second experiment looks at how well suicide notes can be classified when there i...
Early detection of suicidal thoughts is an important part of effective suicide prevention. Such thou...
Suicide-related social media message detection is an important issue. Such messages can reveal a war...
Raw but valuable user data is continuously being generated on social media platforms. This data is, ...
Recent statistics in suicide prevention show that people are increasingly posting their last words o...
Suicide has become a significant issue within our society over the past few decades, so much so that...
The World Wide Web, and online social networks in particular, have increased connectivity between pe...
International audienceCombining linguistic data and behavioral sciences, we use NLP to implement mac...
Research shows that exposure to suicide-related news media content is associated with suicide rates,...
Suicide is the second leading cause of death among 25–34 year olds and the third leading cause of de...
Suicide is a serious and complex issue affecting many individuals and communities worldwide. It can ...
Background: Effective suicide risk assessments and interventions are vital for suicide prevention. A...
Online social networks have become a vital medium for communication. With these platforms, users hav...
Background: Suicide is a leading cause of death worldwide. Identifying those at risk and delivering ...
Using Natural Language Processing (NLP), we are able to analyze text from suicidal individuals. This...
The World Wide Web, and online social networks in particular, have increased connectivity between pe...
Early detection of suicidal thoughts is an important part of effective suicide prevention. Such thou...
Suicide-related social media message detection is an important issue. Such messages can reveal a war...
Raw but valuable user data is continuously being generated on social media platforms. This data is, ...
Recent statistics in suicide prevention show that people are increasingly posting their last words o...
Suicide has become a significant issue within our society over the past few decades, so much so that...
The World Wide Web, and online social networks in particular, have increased connectivity between pe...
International audienceCombining linguistic data and behavioral sciences, we use NLP to implement mac...
Research shows that exposure to suicide-related news media content is associated with suicide rates,...
Suicide is the second leading cause of death among 25–34 year olds and the third leading cause of de...
Suicide is a serious and complex issue affecting many individuals and communities worldwide. It can ...
Background: Effective suicide risk assessments and interventions are vital for suicide prevention. A...
Online social networks have become a vital medium for communication. With these platforms, users hav...
Background: Suicide is a leading cause of death worldwide. Identifying those at risk and delivering ...
Using Natural Language Processing (NLP), we are able to analyze text from suicidal individuals. This...
The World Wide Web, and online social networks in particular, have increased connectivity between pe...
Early detection of suicidal thoughts is an important part of effective suicide prevention. Such thou...
Suicide-related social media message detection is an important issue. Such messages can reveal a war...
Raw but valuable user data is continuously being generated on social media platforms. This data is, ...