Data Analytics for Fraud Risk in Cryptocurrency Platforms

Word Count : 5000

Objectives to cover: 

  • Introduction to Crypto Fraud Risk – Explains the growing need to manage fraud risks in decentralized and centralized cryptocurrency platforms.

  • Common Fraud Types in Crypto Platforms – Highlights scams like wash trading, phishing, and pump-and-dump schemes.

  • Importance of Data Analytics – Shows how analytics helps process large crypto data to identify potential fraud risks.

  • Transaction Behavior Analysis – Examines transaction patterns to detect unusual or suspicious activities.

  • User Risk Profiling – Uses historical user behavior to classify wallets based on fraud risk levels.

  • Anomaly Detection Methods – Identifies deviations from normal trading and transaction behavior.

  • Real-Time Fraud Monitoring – Enables instant detection and alerts for high-risk transactions.

  • Challenges in Fraud Analytics – Discusses issues like data complexity, anonymity, and evolving fraud techniques.

  • Conclusion and Future Direction – Emphasizes the role of advanced analytics and AI in future fraud prevention.

Reference: APA