
Big Data Security Governance and Prevention
This book provides a practical reference for traffic anti-fraud, establishing a new standard for accessible, real-world traffic security governance that empowers readers to design scalable defenses while maintaining optimal user experience.
The internet’s rapid growth has enabled a surge in digital fraud. Cybercriminals exploit every stage of online traffic, from fake promotion scams and bot-driven account fraud to "coupon hacking" during e-commerce sales and sophisticated phishing campaigns. These threats cost billions globally and demand urgent solutions to protect users and platforms. This practical guide demystifies traffic anti-fraud with a five-part, 12-chapter framework. It begins with foundational concepts and then dissects real-world fraud tactics. Part three focuses on data preparation and governance. Core chapters introduce cutting-edge tools, such as device fingerprinting, AI-powered anomaly detection, graph-based network analysis, and cross-modal threat fusion. The final section provides step-by-step strategies for building adaptive anti-fraud systems.
This exceptional resource is ideal for cybersecurity professionals, developers, researchers, and students interested in cybercrime prevention, risk governance, and big data security.
- Undertittel
- Traffic Anti-Fraud in Practice
- Forfatter
- Kai Zhang, Ze Yang, Liyang Hao, Qi Xiong
- ISBN
- 9781041255352
- Språk
- Engelsk
- Vekt
- 446 gram
- Utgivelsesdato
- 11.9.2026
- Forlag
- TAYLOR FRANCIS LTD
- Antall sider
- 224
