Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/8453
Title: Comparative Study: Machine Learning Classification Algorithms for Backdoor Detection
Authors: Abdullahi, Lawal
Olalere, Morufu
Keywords: Backdoor Attack
Classifiers Algorithm
Performance metric
Multi-Layer Perceptron
Issue Date: Mar-2021
Abstract: In the last ten years, malware attacks have become a common crime story online. Nowadays, well-known threats, including viruses, worms, trojans, backdoors, exploits, password stealers, and spyware, have reached millions, and among these threats, the backdoor attack has a high rate of intrusion across global networks around the world. Backdoor attack is a hidden technique is used for getting remote access to a machine or other system that without authentication. In this study ten different supervised learning techniques such as Bayes Net, Bayesian LR, Naives Bayes, Naive Bayes, Multi Layer Perceptron, Lib SVM, K-star, Stacking, Threshold Selection, Randomization filter Classifier and Zero R were employed to achieve the comparative analysis of machine classifier. The performance of the classifier algorithms was rated using Accuracy, Precision, Recall, F-Measure, False Positive Rate and True Positive Rate using WEKA data mining tool. Multi Layer Perceptron was found to be an excellent classifier that gives the best accuracy of 99.97% and a false positive rate of 0.00. The comparative analysis result indicates the achievement of low false-positive rate for backdoor classification which suggests that anti-phishing application developer can implement the machine learning classification algorithm that was discovered to be the best in this study to enhance the feature of Backdoor attack detection and classification.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/8453
Appears in Collections:Cyber Security Science

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