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- Title
Analysis of Weight-Based Voting Classifier for Intrusion Detection System.
- Authors
Hasanah, Miftahul; Putri, Rizqy Ahsana; Putra, Muhammad Aidiel Rachman; Ahmad, Tohari
- Abstract
The evolution of technology and the internet has accelerated the pace of communication and information exchange. Despite technological advancements, the significant weakness lies in the persistent threat of cybercrime, manifesting in various forms like malware, phishing, and ransomware. To solve the cybercrime problems, this research aims to create an intrusion detection system model using a novel framework. In general, the proposed method consists of 3 stages: Data preprocessing, feature selection using ANOVA F-value combined with cross validation, and classification using weight-based voting classifier. Some machine learning methods used in the weight-based voting classifier are random forest, K-nearest neighbour, and logistic regression. The experiment results show that weight order and weight combination affect the detection performance. The proposed method produces an excellent precision value of 98.66%, higher than the single voting classifier.
- Subjects
TECHNOLOGICAL innovations; VOTING; RANSOMWARE; RANDOM forest algorithms; MACHINE learning; LOGISTIC regression analysis; FEATURE selection
- Publication
International Journal of Intelligent Engineering & Systems, 2024, Vol 17, Issue 2, p190
- ISSN
2185-310X
- Publication type
Article
- DOI
10.22266/ijies2024.0430.17