dc.contributor.author | Gyamfi, Nana Kwame | |
dc.contributor.author | Čeponis, Dainius | |
dc.contributor.author | Goranin, Nikolaj | |
dc.date.accessioned | 2023-09-18T16:25:07Z | |
dc.date.available | 2023-09-18T16:25:07Z | |
dc.date.issued | 2022 | |
dc.identifier.other | (crossref_id)140929311 | |
dc.identifier.uri | https://etalpykla.vilniustech.lt/handle/123456789/113634 | |
dc.description.abstract | It is imperative for Internet-based services to monitor service performance closely and detect anomalies as soon as possible. Despite this, deploying anomaly detectors to a particular service is still an extremely challenging task, requiring that the parameters and thresholds of anomaly detectors be manually and iteratively tuned to deliver the desired behaviour. Hence, we present here a way to detect and classify anomalies using Modified Random Forests (M-RF). We have selected Random Forest since it can prevent intrusions up to a good extent by itself and can automatically improve accuracy on anomaly detection. AWSCTD data are collected in this section. Initial pre-processing is done using a histogram equalization method. GLCM is then used to extract the required features, which is be then passed on to the feature extraction technique. Finally, it is sent to M-RF for effective classification before the inevitable next step. The model is evaluated against other pre-trained models like SVM, KNN, ANN, GAN, and fuzzy logic against accuracy, sensitivity, and specificity measures. In comparison to other state-of-the-art models, our model outperformed them by 98%. | eng |
dc.format | PDF | |
dc.format.extent | p. 1-8 | |
dc.format.medium | tekstas / txt | |
dc.language.iso | eng | |
dc.relation.isreferencedby | IEEE Xplore | |
dc.relation.isreferencedby | Scopus | |
dc.rights | Laisvai prieinamas internete | |
dc.source.uri | https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=9897027 | |
dc.source.uri | https://talpykla.elaba.lt/elaba-fedora/objects/elaba:141286960/datastreams/MAIN/content | |
dc.title | Automated system-level anomaly detection and classification using modified random forest | |
dc.type | Straipsnis konferencijos darbų leidinyje Scopus DB / Paper in conference publication in Scopus DB | |
dcterms.references | 39 | |
dc.type.pubtype | P1b - Straipsnis konferencijos darbų leidinyje Scopus DB / Article in conference proceedings Scopus DB | |
dc.contributor.institution | Vilniaus Gedimino technikos universitetas | |
dc.contributor.faculty | Fundamentinių mokslų fakultetas / Faculty of Fundamental Sciences | |
dc.subject.researchfield | T 007 - Informatikos inžinerija / Informatics engineering | |
dc.subject.studydirection | B04 - Informatikos inžinerija / Informatics engineering | |
dc.subject.studydirection | B03 - Programų sistemos / Software engineering | |
dc.subject.studydirection | B02 - Informacijos sistemos / Information system | |
dc.subject.vgtuprioritizedfields | IK0101 - Informacijos ir informacinių technologijų sauga / Information and Information Technologies Security | |
dc.subject.ltspecializations | L106 - Transportas, logistika ir informacinės ir ryšių technologijos (IRT) / Transport, logistic and information and communication technologies | |
dc.subject.en | anomaly | |
dc.subject.en | classification | |
dc.subject.en | machine learning | |
dc.subject.en | random forest | |
dcterms.sourcetitle | Proceedings of 2022 1st International Conference on AI in Cybersecurity (ICAIC), 24-26 May 2022, Victoria, TX, USA | |
dc.publisher.name | IEEE | |
dc.publisher.city | Piscataway, NJ | |
dc.identifier.doi | 140929311 | |
dc.identifier.doi | 10.1109/ICAIC53980.2022.9897027 | |
dc.identifier.elaba | 141286960 | |