While text classification can classify tweets, assessing whether a tweet is related to an ongoing flood event or not based on its text remains difficult. Inclusion of contextual hydrological information could improve the performance of such algorithms. In this study, we designed a multilingual multimodal neural network that can effectively use both textual and hydrological information. The classification data was obtained from the Twitter-streaming API using flood-related keywords in English, French, Spanish and Indonesian. Subsequently, hydrological information was extracted from a global precipitation dataset based on the tweet's timestamp and locations mentioned in its text. We performed three experiments analyzing precision, recall and ...
Extreme weather events are expected to increase in frequency and intensity due to global warming. Du...
In this research, we use natural language processing to predict whether or not text is referring to ...
Through microblogging applications, such as Twitter, people actively document their lives even in ti...
While text classification can classify tweets, assessing whether a tweet is related to an ongoing fl...
While text classification can classify tweets, assessing whether a tweet is related to an ongoing fl...
In recent years, social media such as Twitter have received much attention as a new data source for ...
Social media presents a rich source of real-time information provided by individual users in emergen...
Social media has emerged as a information source for natural disaster detection and assessment, such...
In this paper we use a novel backpropagation technique, Direct Backpropagation (DBP), to train a neu...
Micro blogging platforms like Twitter generate a wealth of information during a disaster. Data can b...
Traditional approaches to flood modelling mostly rely on hydrodynamic physical simulations. While th...
Early event detection and response can significantly reduce the societal impact of floods. Currently...
Social media is not only a way to share information among a group of people but also an emerging sou...
Early event detection and response can significantly reduce the societal impact of floods. Currently...
Twitter, Social Networking Site, becomes most popular microblogging service and people have started ...
Extreme weather events are expected to increase in frequency and intensity due to global warming. Du...
In this research, we use natural language processing to predict whether or not text is referring to ...
Through microblogging applications, such as Twitter, people actively document their lives even in ti...
While text classification can classify tweets, assessing whether a tweet is related to an ongoing fl...
While text classification can classify tweets, assessing whether a tweet is related to an ongoing fl...
In recent years, social media such as Twitter have received much attention as a new data source for ...
Social media presents a rich source of real-time information provided by individual users in emergen...
Social media has emerged as a information source for natural disaster detection and assessment, such...
In this paper we use a novel backpropagation technique, Direct Backpropagation (DBP), to train a neu...
Micro blogging platforms like Twitter generate a wealth of information during a disaster. Data can b...
Traditional approaches to flood modelling mostly rely on hydrodynamic physical simulations. While th...
Early event detection and response can significantly reduce the societal impact of floods. Currently...
Social media is not only a way to share information among a group of people but also an emerging sou...
Early event detection and response can significantly reduce the societal impact of floods. Currently...
Twitter, Social Networking Site, becomes most popular microblogging service and people have started ...
Extreme weather events are expected to increase in frequency and intensity due to global warming. Du...
In this research, we use natural language processing to predict whether or not text is referring to ...
Through microblogging applications, such as Twitter, people actively document their lives even in ti...