Machine Learning-Based Earthquake Emergency Evacuation System

Authors

  • U.Padmavathi Author
  • S.Janardan Author

DOI:

https://doi.org/10.46647/rdems0205034

Keywords:

Cryptocurrency Fraud Detection, Blockchain Dataset, Federated Learning, XGBoost, Machine Learning, Fraud Detection, Distributed Data, Data Privacy, Secure Data Sharing, Decentralized Systems, Financial Fraud, Predictive Analytics, Data Integrity, Privacy-Preserving Learning, Digital Finance.

Abstract

Cryptocurrency fraud has become a significant threat in the digital financial ecosystem, with traditional detection systems often relying on centralized datasets and conventional machine learning techniques. These methods face challenges in terms of scalability, privacy, and the ability to effectively handle distributed and dynamic data sources. In this project, a secure and scalable approach is implemented for cryptocurrency fraud detection by leveraging a dataset stored on a blockchain. By utilizing the blockchain dataset, the system benefits from reliable and tamper-proof data while avoiding the need to implement blockchain infrastructure directly. Federated learning is employed to collaboratively train an XGBoost model across multiple data sources, enabling the detection of fraudulent transactions without centralizing sensitive information. This approach improves model accuracy, ensures data integrity, and provides a systematic framework for analyzing cryptocurrency transactions efficiently. The project demonstrates the potential of integrating advanced machine learning techniques with blockchain-based datasets for robust and privacy-preserving fraud detection.

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Published

2026-05-08