An Online Social Network model through Twitter to build a social perception variable to measure the violence in Mexico
An Online Social Network model through Twitter to build a social perception variable to measure the violence in Mexico
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This paper describes the methodology and the model that used in Twitter to create an indicator that allows us to denote a social perception about violence, a topic of high impact in Mexico. We investigated and validated the keywords that Mexicans used related to this topic, in a specific time-lapse defined by the researchers. We implemented two analysis levels, the first one relative to the sum of tweets, and the second one with a rate of total tweets per 100,000 inhabitan
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