Matches in SemOpenAlex for { <https://semopenalex.org/work/W815649818> ?p ?o ?g. }
- W815649818 abstract "Intrusion Detection Systems (IDS) are developed to be the defense against these security threats. Current signature based IDS like firewalls and anti viruses, which rely on labeled training data, generally can not detect novel attacks. A method that offers a promise to solve this problem is the anomaly based IDS. Literature has shown that direction towards reducing false positive rate and thus enhancing the detection rate and speed have shifted from accurate machine learning classifiers to the adaptive models like bio-inspired models. Consequently, this study has been introduced to enhance the detection rate and speed up the detection process by reducing the network traffic features. Moreover, it aimed to investigate the implementation of the bio-inspired Immune Network approach for clustering different kinds of attacks. This approach aimed at enhancing the detection rate of novel attacks and thus decreasing the high false positive rate in IDS. Rough Set method was applied to reduce the dimension of KDD CUP ’99 dataset which used by this study and select only the features that best represent all kinds of attacks. Immune Network clustering was then applied using aiNet algorithm in order to cluster normal data from attacks in the testing dataset. The results revealed that detection rate and speed were enhanced by using only the most significant features. Furthermore, it was found that Immune Network clustering method is robust in detecting novel attacks in the test dataset. The principal conclusion was that IDS is enhanced by the use of significant network traffic features besides the implementation of the Immune Network clustering to detect novel attacks." @default.
- W815649818 created "2016-06-24" @default.
- W815649818 creator A5072561314 @default.
- W815649818 date "2010-04-01" @default.
- W815649818 modified "2023-09-27" @default.
- W815649818 title "Anomaly intrusion detection system using immune network with reduced network traffic features" @default.
- W815649818 cites W117883395 @default.
- W815649818 cites W132740440 @default.
- W815649818 cites W1480798532 @default.
- W815649818 cites W1481106594 @default.
- W815649818 cites W1492196703 @default.
- W815649818 cites W1492293326 @default.
- W815649818 cites W1507481911 @default.
- W815649818 cites W1512252227 @default.
- W815649818 cites W1521007758 @default.
- W815649818 cites W1529028887 @default.
- W815649818 cites W1533021960 @default.
- W815649818 cites W1533595652 @default.
- W815649818 cites W1533945909 @default.
- W815649818 cites W1543152427 @default.
- W815649818 cites W1566480186 @default.
- W815649818 cites W1566766802 @default.
- W815649818 cites W1578447803 @default.
- W815649818 cites W1583197358 @default.
- W815649818 cites W1588611284 @default.
- W815649818 cites W1606919204 @default.
- W815649818 cites W1608531776 @default.
- W815649818 cites W1624170038 @default.
- W815649818 cites W1775848431 @default.
- W815649818 cites W188588518 @default.
- W815649818 cites W1982304603 @default.
- W815649818 cites W1991830413 @default.
- W815649818 cites W1994759735 @default.
- W815649818 cites W1995126785 @default.
- W815649818 cites W2013489124 @default.
- W815649818 cites W2015974984 @default.
- W815649818 cites W2021792978 @default.
- W815649818 cites W2024454892 @default.
- W815649818 cites W2038065607 @default.
- W815649818 cites W2043622489 @default.
- W815649818 cites W2045012776 @default.
- W815649818 cites W2047872178 @default.
- W815649818 cites W2065329645 @default.
- W815649818 cites W2075968046 @default.
- W815649818 cites W2082110975 @default.
- W815649818 cites W2095167299 @default.
- W815649818 cites W2099603171 @default.
- W815649818 cites W2101043166 @default.
- W815649818 cites W2105779206 @default.
- W815649818 cites W2106997041 @default.
- W815649818 cites W2117381466 @default.
- W815649818 cites W2117619142 @default.
- W815649818 cites W2119897969 @default.
- W815649818 cites W2122646361 @default.
- W815649818 cites W2124365372 @default.
- W815649818 cites W2125055259 @default.
- W815649818 cites W2139224176 @default.
- W815649818 cites W2139280638 @default.
- W815649818 cites W2140832539 @default.
- W815649818 cites W2141409867 @default.
- W815649818 cites W2142889610 @default.
- W815649818 cites W2146548789 @default.
- W815649818 cites W2149029960 @default.
- W815649818 cites W2149141985 @default.
- W815649818 cites W2150847526 @default.
- W815649818 cites W2157665255 @default.
- W815649818 cites W2158698691 @default.
- W815649818 cites W2164576874 @default.
- W815649818 cites W2338717024 @default.
- W815649818 cites W2799061466 @default.
- W815649818 cites W28430786 @default.
- W815649818 cites W3023540311 @default.
- W815649818 cites W3033511840 @default.
- W815649818 cites W314012652 @default.
- W815649818 cites W60934498 @default.
- W815649818 cites W99488971 @default.
- W815649818 cites W11219134 @default.
- W815649818 cites W2797816625 @default.
- W815649818 hasPublicationYear "2010" @default.
- W815649818 type Work @default.
- W815649818 sameAs 815649818 @default.
- W815649818 citedByCount "1" @default.
- W815649818 countsByYear W8156498182014 @default.
- W815649818 crossrefType "dissertation" @default.
- W815649818 hasAuthorship W815649818A5072561314 @default.
- W815649818 hasConcept C119857082 @default.
- W815649818 hasConcept C124101348 @default.
- W815649818 hasConcept C137524506 @default.
- W815649818 hasConcept C153180895 @default.
- W815649818 hasConcept C154945302 @default.
- W815649818 hasConcept C182590292 @default.
- W815649818 hasConcept C35525427 @default.
- W815649818 hasConcept C38652104 @default.
- W815649818 hasConcept C41008148 @default.
- W815649818 hasConcept C73555534 @default.
- W815649818 hasConcept C739882 @default.
- W815649818 hasConcept C95922358 @default.
- W815649818 hasConceptScore W815649818C119857082 @default.
- W815649818 hasConceptScore W815649818C124101348 @default.
- W815649818 hasConceptScore W815649818C137524506 @default.