Social media is perceived as a rich resource for disaster management and relief efforts, but the high class imbalance between disaster-related and non-disaster-related messages challenges a reliable detection. We analyze and compare the effectiveness of three state-of-the-art machine learning models for detecting disaster-related tweets. In this regard we introduce the Disaster Tweet Corpus 2020, an extended compilation of existing resources, which comprises a total of 123,166 tweets from 46 disasters covering 9 disaster types. Our findings from a large experiments series include: detection models work equally well over a broad range of disaster types when being trained for the respective type, a domain transfer across disaster types leads ...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Twitter is extensively used as an information-sharing platform during any kind of emergency like dis...
Social media such as Twitter offers a tremendous amount of data throughout an event or a disastrous ...
Messages on social media can be an important source of information during a disaster. They can frequ...
This paper examines the effectiveness of a range of pre-trained language representations in order to...
This article addresses the problem of detecting crisis‐related messages on social media, in order to...
Messages on social media can be an important source of information during a disaster. They can frequ...
Social media enables fast information exchange and status reporting during crises. Filtering is usua...
Twitter is a popular social media platform where users publicly broadcast short messages on a myriad...
Abstract—In recent years, computer science has advanced exponentially, helping significantly to iden...
In our current social media age, there is an ever-increasing amount of text data available onthe web...
Social media sources can provide crucial information in crisis situations, but discovering...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaSocial media platforms such as Twitte...
The Twitter Stream API offers the possibility to develop (near) real-time methods and applications t...
Disaster Detection using Twitter content is critical for emergency response, but accurately identify...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Twitter is extensively used as an information-sharing platform during any kind of emergency like dis...
Social media such as Twitter offers a tremendous amount of data throughout an event or a disastrous ...
Messages on social media can be an important source of information during a disaster. They can frequ...
This paper examines the effectiveness of a range of pre-trained language representations in order to...
This article addresses the problem of detecting crisis‐related messages on social media, in order to...
Messages on social media can be an important source of information during a disaster. They can frequ...
Social media enables fast information exchange and status reporting during crises. Filtering is usua...
Twitter is a popular social media platform where users publicly broadcast short messages on a myriad...
Abstract—In recent years, computer science has advanced exponentially, helping significantly to iden...
In our current social media age, there is an ever-increasing amount of text data available onthe web...
Social media sources can provide crucial information in crisis situations, but discovering...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaSocial media platforms such as Twitte...
The Twitter Stream API offers the possibility to develop (near) real-time methods and applications t...
Disaster Detection using Twitter content is critical for emergency response, but accurately identify...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Twitter is extensively used as an information-sharing platform during any kind of emergency like dis...
Social media such as Twitter offers a tremendous amount of data throughout an event or a disastrous ...