| 紀錄類型: |
書目-電子資源
: Monograph/item
|
| 正題名/作者: |
Demystifying AI and ML for cyber-threat intelligence/ edited by Ming Yang ... [et al.]. |
| 其他作者: |
Yang, Ming. |
| 出版者: |
Cham :Springer Nature Switzerland : : 2025., |
| 面頁冊數: |
xi, 628 p. :ill. (some col.), digital ;24 cm. |
| 內容註: |
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. |
| Contained By: |
Springer Nature eBook |
| 標題: |
Artificial intelligence - Security measures. - |
| 電子資源: |
https://doi.org/10.1007/978-3-031-90723-4 |
| ISBN: |
9783031907234 |