H K PradeepPavan KumarA J PradeepaS.C. PrashanthaSaad Khan
- The Distributed Denial-of-Service (DDoS) attack is one of the most dangerous cyber threats, surpassing traditional Denial-of-Service (DoS) attacks due to its distributed nature, where multiple hosts collectively target a system, rendering its services inaccessible. Addressing this challenge requires an advanced and reliable detection mechanism. This research presents a machine learning-based approach for DDoS attack detection using Logistic Regression, Random Forest, and Neural Network classifiers. The proposed model is trained on a cleaned and pre-processed dataset with feature scaling to enhance model performance. A Flask-based web application deploys these models, enabling real-time prediction through a user-friendly interface. The trained models are evaluated using key metrics such as accuracy, F1-score, precision, recall, and confusion matrix. Comparative analysis reveals the strengths of ensemble-based methods, offering a scalable and robust solution for mitigating DDoS attacks in real-world environments. Key Words: Cyber Attack, DDOS Attack, Logistic Regression, Neural Network, Random Forest Algorithm.
Swati JadhavPise NitinShruti SinghAkash SinhaVishal SirviShreyansh Srivastava
Sonali AntadRucha UplenchwarPratham GajbhiyeDakshata WasnikOmkar Pawar
Rituparna BorahSatyajit SarmahNitin ChoudhuryHriman MahantaAnjan Chodhury
Mahdi Hassan AysaAbdullahi Abdu İbrahimAlaa Hamid Mohammed
Sanjeev AggarwalBijay Kumar BeheraMurari Kumar SinghAjeet Kumar Sharma