Abstract

In today’s security landscape, advanced threats are becoming increasingly difficult to detect as the pattern of attacks expands. Classical approaches that rely heavily on static matching, such as blacklisting or regular expression patterns, may be limited in flexibility or uncertainty in detecting malicious data in system data. This is where machine learning techniques can show their value and provide new insights and higher detection rates. The behavior of botnets that use domain-flux techniques to hide command and control channels was investigated in this research. The machine learning algorithm and text mining used to analyze the network DNS protocol and identify botnets were also described. For this purpose, extracted and labeled domain name datasets containing healthy and infected DGA botnet data were used. Data preprocessing techniques based on a text-mining approach were applied to explore domain name strings with n-gram analysis and PCA. Its performance is improved by extracting statistical features by principal component analysis. The performance of the proposed model has been evaluated using different classifiers of machine learning algorithms such as decision tree, support vector machine, random forest, and logistic regression. Experimental results show that the random forest algorithm can be used effectively in botnet detection and has the best botnet detection accuracy.

Highlights

  • Introduction e popularity of using theInternet has led to some dangers of network attacks, including botnets, DDoS attacks, and spam

  • Each botnet is a coordinated group of bots that are routed through command and control (C&C) channels and perform malicious activities. us, the main purpose of the proposed method is to detect the botnet to prevent the spread of spam and network traffic

  • Term frequency-inverse document frequency (TFIDF) models are used to model a module for detecting behavioral patterns, and principal component analysis (PCA) is used to increase the speed and accuracy of diagnosis evaluation results

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Summary

Introduction

Introduction e popularity of using theInternet has led to some dangers of network attacks, including botnets, DDoS attacks, and spam. To evaluate the performance of domain name classification using machine learning algorithms, an extracted and tagged domain name dataset, which has 100,000 domain names, was applied. The machine learning algorithm will be selected to apply in the proposed diagnostic model which has the highest overall classification accuracy.

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