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Title:      SEMANTIC UPLIFT CRIMINAL DATA FROM SOCIAL NETWORKS
Author(s):      Eduardo F. Santos, Fernanda Lima
ISBN:      978-989-8533-24-1
Editors:      Pedro Isaías and Bebo White
Year:      2014
Edition:      Single
Keywords:      Semantic Uplift; Social Networks; Criminal Data; Semantic Web
Type:      Short Paper
First Page:      347
Last Page:      351
Language:      English
Cover:      cover          
Full Contents:      click to dowload Download
Paper Abstract:      The evolution of web technologies brought a new view over Web published data, making the information available to both humans and machines. However, as societies are built over citizens’ needs, it is difficult to determine how governments are performing on addressing these needs. Social networks are an interesting tool for people to express their aspirations, but monitoring peoples’ activities to understand their behavior is a difficult task. This paper presents an application of the semantic uplift technique on social networks to store violence and criminality data. The procedure uses the output of natural language processing techniques to classify criminal activity in a general taxonomy, so data can be compared to worldwide statistics.
   

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