The Effect of Data Volume on the Accuracy of Detecting Anomalies in Network Traffic: Exploring the Big Data Effect

Бесплатный доступ

The article discusses the use of machine learning algorithms to detect anomalies based on the CICIDS2017 dataset, which was specifically designed to simulate real-world network attack scenarios. Special attention is paid to three popular algorithms: logistic regression, random forest and neural networks. These algorithms were chosen due to their ability to efficiently process large amounts of data and identify complex patterns. Within the framework of this article, a series of experiments has been conducted in which the amount of training data will vary and the performance of models will be evaluated, both on pure and noisy data. The results of this study will help to better understand how different algorithms respond to changes in the amount of data and the quality of input information, which is an important aspect for developing effective cybersecurity systems.

Еще

Network traffic anomalies, machine learning, big data effect, neural networks, random forest, logistic regression

Короткий адрес: https://sciup.org/148330794

IDR: 148330794   |   DOI: 10.18137/RNU.V9187.25.01.P.112

Статья научная