The importance of the detection of aggressiveness in social media is due to real effects of violence provoked by negative behavior on- line. Indeed, this kind of legal cases are increasing in the last years. For this reason, the necessity of controlling user-generated contents has become one of the priorities for many Internet companies, although current methodologies are far from solving this problem. Therefore, in this work we propose an innovative approach that combines deep learning framework with linguistic features specific for this issue. This approach has been evaluated and compared with other ones in the framework of the MEX-A3T shared task at IberEval on aggressiveness analysis in Spanish Mexican tweets. In spite of our novel approach, we obtained low results.
Deep analysis in aggressive Mexican tweets
Simona Frenda;
2018-01-01
Abstract
The importance of the detection of aggressiveness in social media is due to real effects of violence provoked by negative behavior on- line. Indeed, this kind of legal cases are increasing in the last years. For this reason, the necessity of controlling user-generated contents has become one of the priorities for many Internet companies, although current methodologies are far from solving this problem. Therefore, in this work we propose an innovative approach that combines deep learning framework with linguistic features specific for this issue. This approach has been evaluated and compared with other ones in the framework of the MEX-A3T shared task at IberEval on aggressiveness analysis in Spanish Mexican tweets. In spite of our novel approach, we obtained low results.File | Dimensione | Formato | |
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