In this research, we use natural language processing to predict whether or not text is referring to a natural disaster. Using the Kaggle competition data, consisting of 10,000 labeled Tweets, we apply machine learning models to determine which Tweets are about real disasters and which ones are not. We first perform some exploratory data analysis, visualizing the dataset, and then text preprocessing to remove irrelevant characters. We discover that most disasters are related to natural disasters and criminal activity, while non-disasters, focus on slang and YouTube videos. We implement five machine learning models: Naive Bayes, Support Vector Machines, Random Forest, a Neural Network, and an Ensemble Learner. Naive Bayes and the Ensemble Lea...
In this paper, we propose a machine learning approach to automatically classify non-informative and ...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaSocial media platforms such as Twitte...
Our goal is to establish an automatic model that identifies which tweets are about natural disasters...
Identifying and classifying text extracted from social networks, following the traditional method, i...
In our current social media age, there is an ever-increasing amount of text data available onthe web...
Disaster Detection using Twitter content is critical for emergency response, but accurately identify...
Twitter, Social Networking Site, becomes most popular microblogging service and people have started ...
Messages on social media can be an important source of information during a disaster. They can frequ...
We introduce an analytical framework for analyzing tweets to (1) identify and categorize fine-graine...
Social media such as Twitter can act as a human sensor network for real-time event detection and rec...
Micro blogging platforms like Twitter generate a wealth of information during a disaster. Data can b...
The massive amount of data generated by social media present a unique opportunity for disaster analy...
Through microblogging applications, such as Twitter, people actively document their lives even in ti...
For timely and efficient reactions to disasters, collecting vital and right information is essential...
In this paper, we propose a machine learning approach to automatically classify non-informative and ...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaSocial media platforms such as Twitte...
Our goal is to establish an automatic model that identifies which tweets are about natural disasters...
Identifying and classifying text extracted from social networks, following the traditional method, i...
In our current social media age, there is an ever-increasing amount of text data available onthe web...
Disaster Detection using Twitter content is critical for emergency response, but accurately identify...
Twitter, Social Networking Site, becomes most popular microblogging service and people have started ...
Messages on social media can be an important source of information during a disaster. They can frequ...
We introduce an analytical framework for analyzing tweets to (1) identify and categorize fine-graine...
Social media such as Twitter can act as a human sensor network for real-time event detection and rec...
Micro blogging platforms like Twitter generate a wealth of information during a disaster. Data can b...
The massive amount of data generated by social media present a unique opportunity for disaster analy...
Through microblogging applications, such as Twitter, people actively document their lives even in ti...
For timely and efficient reactions to disasters, collecting vital and right information is essential...
In this paper, we propose a machine learning approach to automatically classify non-informative and ...
The use of social media is expanding significantly and can serve a variety of purposes. Over the las...
Doctor of PhilosophyDepartment of Computer ScienceDoina CarageaSocial media platforms such as Twitte...