Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis.
Attacks represent a serious threat to a network environment, and therefore need to be promptly detected. New attack types, of which detection systems may not even be aware, are the most difficult to detect. Currently, the available methods are mainly based on signature or learning algorithms and ge...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | Portuguese |
Published: |
Universidade de Fortaleza
2009-05-01
|
Series: | Revista Tecnologia |
Subjects: | |
Online Access: | https://periodicos.unifor.br/tec/article/view/65 |
id |
doaj-16352ab4c11f46acaa7ad9cd3bbe10d3 |
---|---|
record_format |
Article |
spelling |
doaj-16352ab4c11f46acaa7ad9cd3bbe10d32020-11-25T03:06:02ZporUniversidade de FortalezaRevista Tecnologia 0101-81912318-07302009-05-0128163Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis.Raimir Holanda0José Everardo Bessa Maia1Marcus Fábio Fontenelle do Carmo2Universidade de FortalezaUniversidade de FortalezaUniversidade de FortalezaAttacks represent a serious threat to a network environment, and therefore need to be promptly detected. New attack types, of which detection systems may not even be aware, are the most difficult to detect. Currently, the available methods are mainly based on signature or learning algorithms and generally cannot detect these new attacks. The approach presented here uses a small number of statistical discriminators and cluster analysis to detect attacks, obtaining results which are better than the results found in previous papers. Cluster analysis is an unsupervised technique and, therefore, it is able to detect new attacks. We performed an empirical test using real traces.https://periodicos.unifor.br/tec/article/view/65segurança em redes de computadores. gerenciamento de dados. segurança de dados. detecção de intrusos. estatística multivariada. |
collection |
DOAJ |
language |
Portuguese |
format |
Article |
sources |
DOAJ |
author |
Raimir Holanda José Everardo Bessa Maia Marcus Fábio Fontenelle do Carmo |
spellingShingle |
Raimir Holanda José Everardo Bessa Maia Marcus Fábio Fontenelle do Carmo Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis. Revista Tecnologia segurança em redes de computadores. gerenciamento de dados. segurança de dados. detecção de intrusos. estatística multivariada. |
author_facet |
Raimir Holanda José Everardo Bessa Maia Marcus Fábio Fontenelle do Carmo |
author_sort |
Raimir Holanda |
title |
Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis. |
title_short |
Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis. |
title_full |
Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis. |
title_fullStr |
Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis. |
title_full_unstemmed |
Detecting Computer Network Attacks Using Statistical Discriminators and Cluster Analysis. |
title_sort |
detecting computer network attacks using statistical discriminators and cluster analysis. |
publisher |
Universidade de Fortaleza |
series |
Revista Tecnologia |
issn |
0101-8191 2318-0730 |
publishDate |
2009-05-01 |
description |
Attacks represent a serious threat to a network environment, and therefore need to be promptly detected. New attack types, of which detection systems may not even be aware, are the most difficult to detect. Currently, the available methods are mainly based on signature or learning algorithms
and generally cannot detect these new attacks. The approach presented here uses a small number of statistical discriminators and cluster analysis to detect attacks, obtaining results which are better than the results found in previous papers. Cluster analysis is an unsupervised technique and, therefore, it is able to detect new attacks. We performed an empirical test using real traces. |
topic |
segurança em redes de computadores. gerenciamento de dados. segurança de dados. detecção de intrusos. estatística multivariada. |
url |
https://periodicos.unifor.br/tec/article/view/65 |
work_keys_str_mv |
AT raimirholanda detectingcomputernetworkattacksusingstatisticaldiscriminatorsandclusteranalysis AT joseeverardobessamaia detectingcomputernetworkattacksusingstatisticaldiscriminatorsandclusteranalysis AT marcusfabiofontenelledocarmo detectingcomputernetworkattacksusingstatisticaldiscriminatorsandclusteranalysis |
_version_ |
1724675808378748928 |