UGR’16: A New Dataset for the Evaluation of Cyclostationarity-Based Network IDSs
Identificadores
URI: http://hdl.handle.net/10481/55280Metadatos
Afficher la notice complèteAuteur
Macía Fernández, Gabriel; Camacho Páez, José; Magán Carrión, Roberto; García Teodoro, Pedro; Theron, RobertoMateria
Network security IDS Network traffic Netflow
Date
2018-03Résumé
The evaluation of algorithms and techniques to implement intrusion detection systems heavily rely on the existence
of well designed datasets. In the last years, a lot of efforts
have been done towards building these datasets. Yet, there is
still room to improve. In this paper, a comprehensive review of
existing datasets is first done, making emphasis on their main
shortcomings. Then, we present a new dataset that is built with
real traffic and up-to-date attacks. The main advantage of this
dataset over previous ones is its usefulness for evaluating IDSs
that consider long-term evolution and traffic periodicity. Models
that consider differences in daytime/night or weekdays/weekends
can also be trained and evaluated with it. We discuss all the
requirements for a modern IDS evaluation dataset and analyze
how the one presented here meets the different needs.