Behavior of Users Talking about Pathologies and Diseases on Twitter

Project Report from the year 2015 in the subject Computer Science - Applied, , language: English, abstract: With the amount of data available on social networks, new methodologies for the analysis of information are needed. Some methods allow the users to combine different types of data in order to extract relevant information. In this context, the present paper shows the application of a model via a platform in order to group together information generated by Twitter users, thus facilitating the detection of trends and data related to particular pathologies. In order to implement the model, an analyzing tool that uses the Levenshtein distance was developed, to determine exactly what is required to convert a text into the following texts: 'gripa'-'flu', 'dolor de cabeza'-'headache', 'dolor de estomago'-'stomachache', 'fiebre'-'fever' and 'tos'-'cough' in the area of Bogotá.