Using artificial neural network in intrusion detection systems to computer networks

@article{Dias2017UsingAN,
  title={Using artificial neural network in intrusion detection systems to computer networks},
  author={L. P. Dias and J{\'e}s de Jesus Fiais Cerqueira and Karcius Day Rosario Assis and R. C. Almeida},
  journal={2017 9th Computer Science and Electronic Engineering (CEEC)},
  year={2017},
  pages={145-150}
}
The constant growth in the use of computer networks has demanded some concerns regarding disponibility, vulnerability and security. Intrusion Detection Systems (IDS) have been considered essential in keeping network security and therefore have been commonly adopted by network administrators. A possible disadvantage is the fact that such systems are usually based on signature systems, which make them strongly dependent on updated database and consequently inefficient against novel attacks… Expand
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