While microblogging-based Online Social Networks have become an attractive data source in emergency situations, overcoming information overload is still not trivial. We propose a framework which integrates natural language processing and clustering techniques in order to produce a ranking of relevant tweets based on their informativeness. Experiments on four Twitter collections in two languages (English and French) proved the significance of our approach
Social media platforms, like Twitter, are increasingly used by billions of people internationally to...
The role of social media, in particular microblogging platforms such as Twitter, as a conduit for ac...
This project proposes a framework that identifies high‐value disaster-based information from s...
International audienceObtaining relevant timely information during crisis events is a challenging ta...
Messages on social media can be an important source of information during a disaster. They can frequ...
Social media such as Twitter can act as a human sensor network for real-time event detection and rec...
The cross-lingual natural disaster dataset includes public tweets collected using Twitter’s public A...
Social media platforms, such as Twitter, offer a rich source of real-time information about real-wor...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Twitter is an immediate and almost ubiquitous platform and therefore can be a valuable source of inf...
In this paper, we propose a machine learning approach to automatically classify non-informative and ...
Abstract. Increasingly, more important information is being shared through Twitter. New opportunitie...
In this paper, we present a Deep Learning-based system for the support of information triaging on Tw...
We present text processing framework for discovering, classification, and localization emergency rel...
Social media can be an important, constantly updated, source of information concerning natural disas...
Social media platforms, like Twitter, are increasingly used by billions of people internationally to...
The role of social media, in particular microblogging platforms such as Twitter, as a conduit for ac...
This project proposes a framework that identifies high‐value disaster-based information from s...
International audienceObtaining relevant timely information during crisis events is a challenging ta...
Messages on social media can be an important source of information during a disaster. They can frequ...
Social media such as Twitter can act as a human sensor network for real-time event detection and rec...
The cross-lingual natural disaster dataset includes public tweets collected using Twitter’s public A...
Social media platforms, such as Twitter, offer a rich source of real-time information about real-wor...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Twitter is an immediate and almost ubiquitous platform and therefore can be a valuable source of inf...
In this paper, we propose a machine learning approach to automatically classify non-informative and ...
Abstract. Increasingly, more important information is being shared through Twitter. New opportunitie...
In this paper, we present a Deep Learning-based system for the support of information triaging on Tw...
We present text processing framework for discovering, classification, and localization emergency rel...
Social media can be an important, constantly updated, source of information concerning natural disas...
Social media platforms, like Twitter, are increasingly used by billions of people internationally to...
The role of social media, in particular microblogging platforms such as Twitter, as a conduit for ac...
This project proposes a framework that identifies high‐value disaster-based information from s...