The rapid development of internet technology has led to an increase in cybercrime, including attacks on computer networks such as Distributed Denial of Service (DDoS). These attacks can cause serious disruption to systems and steal important data. Therefore, early detection of attacks is very important to maintain network security. One effective method for detecting anomalies in networks is the Decision Tree algorithm, due to its ability to classify data quickly and easily. This study aims to develop a Decision Tree-based attack detection model using the CICIDS 2017 dataset. The results of the study show that this algorithm is capable of classifying attack data with a high degree of accuracy and is reliable in handling large-scale data. Thus, the resulting model can help improve the security and performance of computer networks
Sitanggang et al. (Wed,) studied this question.