Abstract

Now-a-days, Cybersecurity attacks are becoming increasingly sophisticated and presenting a growing threat to individuals, private and public sectors, especially the Denial Of Service attack (DOS) and its variant Distributed Denial Of Service (DDOS). Dealing with these dangerous threats by using traditional mitigation solutions suffers from several limits and performance issues. To overcome these limitations, Machine Learning (ML) has become one of the key techniques to enrich, complement and enhance the traditional security experiences. In this context, we focus on one of the key processes that improve and optimize Machine Learning DOS-DDOS predicting models: DOS-DDOS feature selection process, particularly the wrapper process. By studying different DOS-DDOS datasets, algorithms and results of several research projects, we have reviewed and evaluated the impact on used wrapper strategies, number of DOS-DDOS features, and many commonly used metrics to evaluate DOS-DDOS prediction models based on the optimized DOS-DDOS features. In this paper, we present three important dashboards that are essential to understand the performance of three wrapper strategies commonly used in DOS-DDOS ML systems: heuristic search algorithms, meta-heuristic search and random search methods. Based on this review and evaluation study, we can observe some of wrapper strategies, algorithms, DOS-DDOS features with a relevant impact can be selected to improve the DOS-DDOS ML existing solutions.

Highlights

  • With the exponential proliferation of Internet users, the network traffic has known a massive generation of data

  • Based on Denial Of Service attack (DOS)-Distributed Denial Of Service (DDOS) security modeling process (Fig. 1) and many common algorithms like K-Nearest Neighbors Algorithm (KNN), Support Vector Machines (SVM), Random Forest (RF) as well as Naïve Bayes (NB), etc. many recent research projects have shown other important preventing benefits of Machine Learning (ML) algorithms compared to the existing traditional solutions ([1], [12], [21])

  • Cybersecurity attacks grow over time, especially the Denial of Service attack (DOS) and its variant Distributed Denial of Service (DDOS)

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Summary

INTRODUCTION

With the exponential proliferation of Internet users, the network traffic has known a massive generation of data. Cybersecurity attacks are becoming increasingly sophisticated, the infrastructure attacks that make security analysis systems more vulnerable to several failures [1] One of these most famous threats is Denial Of Service attack (DOS) and its variant Distributed Denial Of Service (DDOS) ([4],[5]). The obtained features subset improves the execution time, the detection rate and the accuracy of the used DOS-DDOS models In this context, this investigation presents a review and evaluation study related to DOS-DDOS attacks prediction based on one of the effective methods to select relevant DOSDDOS features: Wrapper process.

DEALING WITH DOS AND DDOS
THE USE OF MACHINE LEARNING IN DOS-DDOS ATTACKS PREVENTION
IMPACT OF FEATURE SELECTION PROCESS DOS-DDOS MACHINE LEARNING PROJECTS
Objective of the Study
Findings
CONCLUSION
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