Automated AI Research On Cyber Attack Prediction And Security Design
Author
Abstract

A fast expanding topic of study on automated AI is focused on the prediction and prevention of cyber-attacks using machine learning algorithms. In this study, we examined the research on applying machine learning algorithms to the problems of strategic cyber defense and attack forecasting. We also provided a technique for assessing and choosing the best machine learning models for anticipating cyber-attacks. Our findings show that machine learning methods, especially random forest and neural network models, are very accurate in predicting cyber-attacks. Additionally, we discovered a number of crucial characteristics, such as source IP, packet size, and malicious traffic that are strongly associated with the likelihood of cyber-attacks. Our results imply that automated AI research on cyber-attack prediction and security planning has tremendous promise for enhancing cyber-security and averting cyber-attacks.

Year of Publication
2023
Date Published
sep
URL
https://ieeexplore.ieee.org/document/10397798/?arnumber=10397798
DOI
10.1109/IC3I59117.2023.10397798
Google Scholar | BibTeX | DOI