Trabalho de Conclusão de Curso de Graduação
Utilização de aprendizado profundo para detecção de anomalias em redes de computadores
Fecha
2019-12-04Autor
Wiethan, William da Silva
Institución
Resumen
The idea of an intelligent and independent learning machine has fascinated humans for
decades, today several factors have come together to make machine learning a reality. In
this context of artificial intelligence, deep learning has been one of the most widely used
machine learning tools, but its use in network anomaly detection, a relevant area, is still not
explored if we compare with areas such as image recognition and voice identification. In
this work we study the use of deep learning in detecting anomalies in networks by implementing
and analyzing three models of deep learning-based classifiers, which were tested
in cross-validation runs and in data from a database parallel to the one of its training. As a
result, it can be said that the binary classifier, had a reasonable performance in relation to
the other classifiers proposed in the work.