AI-Powered Blockchain for Fraud Prevention in E-Commerce
Abstract
E-commerce platforms are frequently targeted by fraudsters, and traditional fraud detection systems often fall short in identifying sophisticated schemes. This paper presents an AI-powered blockchain framework for fraud prevention in e-commerce. By recording all transactions and user activities on a blockchain, we create an immutable and transparent ledger that can be analyzed by AI models to detect fraudulent patterns. The blockchain ensures the integrity of the data, while AI algorithms continuously learn from new data to improve fraud detection accuracy. Smart contracts are used to automate the verification of transactions and trigger alerts for suspicious activities. Our experimental results indicate that the AI-powered blockchain framework reduces fraudulent transactions by 30% and improves customer trust in e-commerce platforms. This approach provides a scalable and effective solution for combating e-commerce fraud in a rapidly growing digital economy.
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References
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