Abstract
Stock price manipulation in capital markets is the use of illegitimate means to influence the price of traded stocks to attempt to reap illicit profit. Most of the existing attempts to detect such manipulations have either relied upon annotated trading data, using supervised methods or have been restricted to detecting a specific manipulation scheme. Several research in the past investigated the issue of insider trade detection mainly focusing on annotated data and few components involved in insider trades. This paper proposes a fully unsupervised model based on learning the relationships among stock prices in higher dimensions using non-linear transformation, i.e., Kernel-based Principal Component Analysis (KPCA). The proposed model is trained on input features appended with reference price data extracted from the trades executed at the Primary Market: the market of listing. This is intended to efficiently capture the cause/effect of price movements about which insider trading was potentially committed. A proposed kernel density estimate-based clustering method is further implemented to cluster normal and potentially manipulative trades based on the representation of principal components. The novelty of the proposed approach can be explained by automated selection of model parameters while avoiding labelling information. This approach is validated on stock trade data from Aquis Exchange PLC (AQX) and the Primary Market. The results show significant improvements in the detection performance over existing price manipulation detection techniques.
B. RizviāThis research work is sponsored by Aquis Exchange PLC, London, and the UK Research and Innovation (UKRI).
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Rizvi, B., Attew, D., Farid, M. (2023). Unsupervised Manipulation Detection Scheme forĀ Insider Trading. In: Abraham, A., Pllana, S., Casalino, G., Ma, K., Bajaj, A. (eds) Intelligent Systems Design and Applications. ISDA 2022. Lecture Notes in Networks and Systems, vol 717. Springer, Cham. https://doi.org/10.1007/978-3-031-35510-3_24
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