Demystifying AI and ML for Cyber–Threat Intelligence

Dettagli Bibliografici
Ente Autore: SpringerLink (Online service)
Altri autori: Yang, Ming (Redattore), Mohanty, Sachi Nandan (Redattore), Satpathy, Suneeta (Redattore), Hu, Shu (Redattore)
Riassunto:XI, 628 p. 190 illus., 143 illus. in color.
text
Lingua:inglese
Pubblicazione: Cham : Springer Nature Switzerland : Imprint: Springer, 2025.
Edizione:1st ed. 2025.
Serie:Information Systems Engineering and Management, 43
Soggetti:
Accesso online:https://doi.org/10.1007/978-3-031-90723-4
Natura: Elettronico Libro
Sommario:
  • A Comprehensive Review on the Detection Capabilities of IDS using Deep Learning Techniques
  • Next-Generation Intrusion Detection Framework with Active Learning-Driven Neural Networks for DDoS Defense
  • Ensemble Learning-based Intrusion Detection System for RPL-based IoT Networks
  • Advancing Detection of Man-in-the-Middle Attacks through Possibilistic C-Means Clustering
  • CNN-Based IDS for Internet of Vehicles Using Transfer Learning
  • Real-Time Network Intrusion Detection System using Machine Learning
  • OpIDS-DL : OPTIMIZING INTRUSION DETECTION IN IoT NETWORKS: A DEEP LEARNING APPROACH WITH REGULARIZATION AND DROPOUT FOR ENHANCED CYBERSECURITY
  • ML-Powered Sensitive Data Loss Prevention Firewall for Generative AI Applications
  • Enhancing Data Integrity: Unveiling the Potential of Reversible Logic for Error Detection and Correction
  • Enhancing Cyber security through Reversible Logic
  • Beyond Passwords: Enhancing Security with Continuous Behavioral Biometrics and Passive Authentication.