A Random Forest approach to detect and identify Unlawful Insider Trading
Krishna Neupane, Igor Griva

TL;DR
This paper presents a Random Forest-based method enhanced with PCA for detecting unlawful insider trading, achieving high accuracy and revealing key features related to ownership and governance.
Contribution
The study introduces an automated end-to-end approach combining PCA and Random Forest to improve detection of insider trading in high-dimensional financial data.
Findings
Achieved 96.43% classification accuracy.
Found ownership and governance features are crucial.
Model correctly classifies 95.47% lawful and 98% unlawful transactions.
Abstract
According to The Exchange Act, 1934 unlawful insider trading is the abuse of access to privileged corporate information. While a blurred line between "routine" the "opportunistic" insider trading exists, detection of strategies that insiders mold to maneuver fair market prices to their advantage is an uphill battle for hand-engineered approaches. In the context of detailed high-dimensional financial and trade data that are structurally built by multiple covariates, in this study, we explore, implement and provide detailed comparison to the existing study (Deng et al. (2019)) and independently implement automated end-to-end state-of-art methods by integrating principal component analysis to the random forest (PCA-RF) followed by a standalone random forest (RF) with 320 and 3984 randomly selected, semi-manually labeled and normalized transactions from multiple industry. The settings…
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Taxonomy
TopicsFinancial Markets and Investment Strategies · Corporate Finance and Governance · Credit Risk and Financial Regulations
