Multi-criteria neurological method to determine the violation of the right to the protection of personal data and the breach of legitimate data processing

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Segundo Heriberto Granja Huacón
Christian Emmanuel Bohórquez Rizzo
Daybelis Fernanda Olaya Ponce
Daniela Mariuxi Suárez Zambrano

Abstract

This research addresses the problem of the violation of the right to protection of personal data and the failure to comply with the legitimate treatment of these in the Municipality of Babahoyo. The relevance of the study lay in the growing concern for the security and privacy of personal data, in a context where government entities played a crucial role in the management of sensitive information. This research proposes a multicriteria neurosophic method to determine the status of the violation of the right to protection of personal data and the failure to comply with the legitimate treatment of these in the Municipality of Babahoyo. With the implementation of the proposed method, it was possible to identify the importance of aligning the operations of the Municipality with the legal and ethical obligations of data protection, evidencing the consequences of not doing so, both for the institution and for citizens. By proposing solutions based on the improvement of internal policies and the implementation of effective security measures, the study sought to promote a culture of respect for privacy and individual rights.  

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How to Cite
Multi-criteria neurological method to determine the violation of the right to the protection of personal data and the breach of legitimate data processing. (2024). Neutrosophic Computing and Machine Learning. ISSN 2574-1101, 32, 286-294. https://fs.unm.edu/NCML2/index.php/112/article/view/544
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How to Cite

Multi-criteria neurological method to determine the violation of the right to the protection of personal data and the breach of legitimate data processing. (2024). Neutrosophic Computing and Machine Learning. ISSN 2574-1101, 32, 286-294. https://fs.unm.edu/NCML2/index.php/112/article/view/544

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