Evaluating Features Selection on NSL-KDD Data-Set to Train a Support Vector Machine-Based Intrusion Detection System
Fecha
2019Registro en:
2019 IEEE Colombian Conference on Applications in Computational Intelligence, ColCACI 2019 - Proceedings
9781728116143
10.1109/ColCACI.2019.8781803
Universidad Tecnológica de Bolívar
Repositorio UTB
57210565161
26325154200
Autor
Álvarez Almeida L.A.
Carlos Martinez Santos J.
Resumen
The integrity of information and services is one of the more evident concerns in the world of global information security, due to the fact that it has economic repercussions on the digital industry. For this reason, big companies spend a lot of money on systems that protect them against cyber-attacks like Denial of Service attacks. In this article, we will use all the attributes of the data-set NSL-KDD to train and test a Support Vector Machine model. This model will then be applied to a method of feature selection to obtain the most relevant attributes within the aforementioned data-set and train the model again. The main goal is comparing the results obtained in both instances of training and validate which was more efficient. © 2019 IEEE.