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Machine Learning Approaches for DDoS Detection and Network Forensics

Machine Learning Approaches for DDoS Detection and Network Forensics

Saswati Chatterjee

51,52 €
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Disponible
Editorial:
Eliva Press
Año de edición:
2025
Materia
Ciencias de la computación
ISBN:
9789999328524
51,52 €
IVA incluido
Disponible

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Machine Learning Approaches for DDoS Detection and Network ForensicsAn Investigative Framework Using KNN, SVM, and Bayesian Models on Benchmark DatasetsIn an era where cyber threats grow more sophisticated by the day, Distributed Denial-of-Service (DDoS) attacks have emerged as one of the most severe and disruptive forms of intrusion. This book presents a practical and research-driven guide to detecting and analyzing DDoS attacks using advanced machine learning techniques.Drawing on benchmark datasets like KDD Cup 99 and NSL-KDD, the authors introduce a robust framework for network forensic investigation, combining K-Nearest Neighbor (KNN), Support Vector Machines (SVM), and Naïve Bayesian classifiers. Each algorithm is evaluated using precision, recall, and ROC curves to assess their real-world applicability.This book explores:Core concepts of DDoS detection and digital evidence gatheringFeature selection and dimensionality reduction for traffic analysisImplementation of classification models using real traffic dataPerformance evaluation and comparative analysis of learning algorithmsPractical use of network forensic tools such as Xplico and NetDetector.

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