Please use this identifier to cite or link to this item: https://rda.sliit.lk/handle/123456789/2720
Title: Super Learner for Malicious URL Detection
Authors: Hevapathige, A
Rathnayake, K
Keywords: Super Learner
Malicious
URL Detection
Issue Date: 23-Feb-2022
Publisher: IEEE
Citation: A. Hevapathige and K. Rathnayake, "Super Learner for Malicious URL Detection," 2022 2nd International Conference on Advanced Research in Computing (ICARC), 2022, pp. 114-119, doi: 10.1109/ICARC54489.2022.9753802.
Series/Report no.: 2022 2nd International Conference on Advanced Research in Computing (ICARC);
Abstract: Malicious Uniform Resource Locator (URL) detection is one of the prominent research areas in Cyber security. Machine learning and statistical models are mainly used for this task due to their ability to adapt complex patterns. This research study mainly focused on implementing a machine learning classifier model using Super Learner ensemble to classify malicious URLs. Static feature set is extracted using only the URL information with less latency and reduced computational complexity to support offline and real-time detection. Proposed binary classifier model is used to separate malicious URLs from benign ones whereas the proposed multi-class classifier model separates URLs into benign and multiple categories of attacks (phishing, malware, spam and defacement). These classifiers are tested on a dataset comprising around 750,000 URLs. The empirical results show that the proposed model works well in malicious URL detection. The binary classifier provides 95.145% accuracy and 96.844% precision whereas the multi-class classifier provides 94.69% accuracy and 96.234% precision. Also, the comparison results show that the proposed model outperforms leading supervised machine learning algorithms in malicious URL detection.
URI: http://rda.sliit.lk/handle/123456789/2720
ISSN: 978-1-6654-0741-0
Appears in Collections:Department of Information Technology

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