2023
DOI: 10.1155/2023/5780357
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Towards Supercomputing Categorizing the Maliciousness upon Cybersecurity Blacklists with Concept Drift

Abstract: In this article, we have carried out a case study to optimize the classification of the maliciousness of cybersecurity events by IP addresses using machine learning techniques. The optimization is studied focusing on time complexity. Firstly, we have used the extreme gradient boosting model, and secondly, we have parallelized the machine learning algorithm to study the effect of using a different number of cores for the problem. We have classified the cybersecurity events’ maliciousness in a biclass and a mult… Show more

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