Needles in a haystack: using forensic network science to uncover insider trading
By: Gian Jaeger, Wang Ngai Yeung, Renaud Lambiotte
Although the automation and digitisation of anti-financial crime investigation has made significant progress in recent years, detecting insider trading remains a unique challenge, partly due to the limited availability of labelled data. To address this challenge, we propose using a data-driven networks approach that flags groups of corporate insiders who report coordinated transactions that are indicative of insider trading. Specifically, we leverage data on 2.9 million trades reported to the U.S. Securities and Exchange Commission (SEC) by company insiders (C-suite executives, board members and major shareholders) between 2014 and 2024. Our proposed algorithm constructs weighted edges between insiders based on the temporal similarity of their trades over the 10-year timeframe. Within this network we then uncover trends that indicate insider trading by focusing on central nodes and anomalous subgraphs. To highlight the validity of our approach we evaluate our findings with reference to two null models, generated by running our algorithm on synthetic empirically calibrated and shuffled datasets. The results indicate that our approach can be used to detect pairs or clusters of insiders whose behaviour suggests insider trading and/or market manipulation.
Similar Papers
Wealth or Stealth? The Camouflage Effect in Insider Trading
General Economics
Helps catch secret stock market cheaters.
An extreme Gradient Boosting (XGBoost) Trees approach to Detect and Identify Unlawful Insider Trading (UIT) Transactions
Computational Finance
Finds illegal stock trades by company insiders.
Network Analysis of Global Banking Systems and Detection of Suspicious Transactions
Social and Information Networks
Finds hidden money launderers and risky banks.