XOR DETEKTOR KONFLIKTNIH ODLUKA O ANOMALIJAMA U RAČUNARSKIM MREŽAMA

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XOR DETEKTOR KONFLIKTNIH ODLUKA O ANOMALIJAMA U RAČUNARSKIM MREŽAMA

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dc.contributor.advisor Tanasković, Marko
dc.contributor.author Protić, Danijela
dc.date.accessioned 2023-09-26T13:36:02Z
dc.date.available 2023-09-26T13:36:02Z
dc.date.issued 2023
dc.identifier.uri http://hdl.handle.net/123456789/5599
dc.description.abstract Anomaly detection is the recognition of suspicious computer network behavior by comparing unknown network traffic to a statistical model of normal network behavior. Binary classifiers based on supervised machine learning are good candidates for normality detection. This thesis presents five standard binary classifiers: the k-nearest neighbors, weighted k-nearest neighbors, decision trees, support vector machines and feedforward neural network. The main problem with supervised learning is that it takes a lot of data to train high-precision classifiers. To reduce the training time with minimal degradation of the accuracy of the models, a two-phase pre-processing step is performed. In the first phase, numeric attributes are selected to reduce the dataset. The second phase is a novel normalization method based on hyperbolic the tangent function and the damping strategy of the Levenberg-Marquardt algorithm. The Kyoto 2006+ dataset, the only publicly available data set of real-world network traffic intended solely for anomaly detection research in computer networks, was used to demonstrate the positive impact of such pre-processing on classifier training time and accuracy. Of all the selected classifiers, the feedforward neural network has the highest processing speed, while the weighted k-nearest neighbor model proved to be the most accurate. The assumption is that when the classifiers work concurrently, they should detect either an anomaly or normal network traffic, which occasionally is not the case, resulting in different decision about the anomaly, i.e. a conflict arises. The conflicting decision detector performs a logical exclusive OR (XOR) operation on the outputs of the classifiers. If both classifiers simultaneously detected an anomaly or recognized traffic as normal, their decision was no conflict had occurred. Otherwise a conflict is detected. The number of conflicts detected provides an opportunity for additional detection of changes in computer network behavior. en_US
dc.description.provenance Submitted by Slavisha Milisavljevic (slavisha) on 2023-09-26T13:36:02Z No. of bitstreams: 1 Danijela Protic - Doktorska Disertacija.pdf: 3143872 bytes, checksum: bb4ccdd72f98922a5da8ccd21d4f382d (MD5) en
dc.description.provenance Made available in DSpace on 2023-09-26T13:36:02Z (GMT). No. of bitstreams: 1 Danijela Protic - Doktorska Disertacija.pdf: 3143872 bytes, checksum: bb4ccdd72f98922a5da8ccd21d4f382d (MD5) Previous issue date: 2023 en
dc.language.iso sr en_US
dc.publisher Beograd en_US
dc.title XOR DETEKTOR KONFLIKTNIH ODLUKA O ANOMALIJAMA U RAČUNARSKIM MREŽAMA en_US
mf.author.birth-date 1970
mf.author.birth-place Varaždin en_US
mf.author.birth-country Hrvatska en_US
mf.author.residence-state Srbija en_US
mf.author.citizenship Srpsko en_US
mf.author.nationality Srpkinja en_US
mf.subject.area Computer science en_US
mf.contributor.committee Marjanović-Jakovljević, Marina
mf.contributor.committee Spalević, Petar
mf.document.references 32 en_US
mf.document.pages 90 en_US
mf.document.location Beograd en_US
mf.document.genealogy-project No en_US
mf.university Singidunum en_US

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