AI-driven Cyber Risk Management (River Publishers Series in Digital Security and Forensics)

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AI-driven Cyber Risk Management (River Publishers Series in Digital Security and Forensics)

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  • 製本 Hardcover:ハードカバー版/ページ数 504 p.
  • 言語 ENG
  • 商品コード 9788743808060

Full Description

This book provides a comprehensive exploration of how artificial intelligence (AI) is revolutionizing cyber risk management, offering advanced methodologies to identify, assess, quantify, and mitigate threats effectively. Through the integration of AI, big data analytics, and emerging technologies, this book presents cutting-edge approaches to addressing cyber risks. Readers will gain insights into how AI enhances threat detection, fraud prevention, risk quantification, and incident response, equipping businesses to anticipate, measure, and mitigate cyber disruptions with greater precision.
In today's digital landscape, businesses increasingly depend on complex cyber systems including cloud computing and data infrastructure, enterprise systems, financial and payment, and other operational systems, which make them susceptible to a wide range of risks beyond conventional security threats. Downtimes, system failures, data breaches, and cyber infrastructure outages can cause significant operational, reputational, and financial disruptions. To navigate these challenges, organizations must move beyond traditional risk management approaches and adopt AI-driven solutions for more proactive and intelligent cyber risk management.
Structured around key aspects of AI-driven cyber risk management, the book begins with foundational principles before delving into the rise of AI in cyber risk management, the role of big data in risk analysis, and the application of AI in threat intelligence and fraud detection. Readers will explore AI-powered risk quantification models, automated mitigation strategies, and the integration of AI into cybersecurity infrastructure, business continuity planning, and disaster recovery. Industry-specific case studies offer real-world insights into AI's impact across different sectors, while discussions on emerging technologies, such as IoT, blockchain, large language models, advanced machine learning, and explainable AI, highlight the future trajectory of AI in cyber risk management.
Aimed at professionals, researchers, and students, this book balances technical depth with practical clarity, making it an essential guide for those seeking to bridge the gap between AI innovation and real-world cyber risk applications. By addressing both the potential and challenges of AI-driven solutions, it presents a forward-thinking strategy for building resilient, AI-powered cyber risk management frameworks.

Contents

1. Foundations of Cyber Risk Management 2. The Rise of AI and Risk Management 3. The Future of Cyber Risk Management in an AI-driven World 4. Artificial Intelligence in Cyber Risk Management: Revolutionizing Threat Detection and Resilience 5. AI for Threat Detection and Intelligence
6. Empowering Cybersecurity with AI: Advanced Threat Detection, Predictive Intelligence, and Real-time Defense 7. AI-powered Risk Mitigation and Intelligent Incident Response in Cybersecurity 8. Challenges in Cyber Risk Analysis Using Big Data and AI Models 9. Rising Impact of AI in Cyber Risk Management in the Context of Small- and Medium-sized Enterprises 10. Toward Resilient Cyber Defense: Integrating AI and Blockchain for Smart Risk Management 11. Advanced Approaches to Fraud Detection and Financial Risk Mitigation Using Intelligent Analytics 12. XAI-driven Approaches to Detect Financial Frauds and Mitigate Risk 13. MIND-SHIELD: A Multi-Intelligence Deep Learning Framework for Hierarchical Threat Detection and Zero-shot Situational Intelligence Process 14. Integrating AI into Cybersecurity Infrastructure: A Case Study on Dynamic C&C Server Architecture (PhantomNet) 15. Automating Cybersecurity Risk Assessments with a Modern Penetration Testing Approach (PenTest Pro)

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