AI-DRIVEN SURVEILLANCE AND BLOCKCHAIN INTEGRATION FOR INSIDER TRADING DETECTION: A REGULATORY FRAMEWORK FOR SEBI
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Abstract
The rapid evolution of financial markets, coupled with the limitations of traditional regulatory mechanisms, poses significant challenges in detecting and preventing insider trading. This study introduces an AI-driven trade surveillance framework integrated with blockchain-based compliance mechanisms to enhance SEBI’s regulatory oversight. The proposed approach leverages deep learning models (CNN + LSTM) for real-time anomaly detection in trading activities, while blockchain-powered smart contracts ensure secure, transparent, and tamper-proof trade records. Additionally, Explainable AI (XAI) improves the interpretability and legal admissibility of AI-generated evidence, addressing concerns related to regulatory transparency and judicial scrutiny. The findings indicate that AI-powered surveillance significantly enhances the accuracy of insider trading detection, while blockchain strengthens compliance, auditability, and cross-border regulatory cooperation. Integrating AI and blockchain into SEBI’s enforcement framework can accelerate regulatory interventions, bolster whistleblower protections, and uphold financial market integrity. Future research should explore extending AI-driven surveillance to decentralized finance (DeFi) ecosystems and refining blockchain-based governance models to align with global financial regulations.