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An Intelligent System for Insider Trading Identification in Chinese Security Market

Shangkun Deng (), Chenguang Wang (), Zhe Fu () and Mingyue Wang ()
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Shangkun Deng: China Three Gorges University
Chenguang Wang: China Three Gorges University
Zhe Fu: Beijing Normal University
Mingyue Wang: China Three Gorges University

Computational Economics, 2021, vol. 57, issue 2, No 9, 593-616

Abstract: Abstract Insider trading is one kind of criminal behaviors in security markets. It has existed since the birth of the security market. Until 2018, the history of the Chinese security market is less than 30 years, nonetheless, insider trading behavior frequently occurred. In this study, we mainly explore the features of insider trading behavior by studying relevant indicators during the sensitive period (time window length before the release of insider information). For this purpose, an intelligent system with an integration method of Principal Component Analysis (PCA) and Random Forest (RF) is proposed to identify insider tradings in Chinese security market. In the proposed method, we first collect twenty-six relevant indicators for insider trading samples that occurred from 2007 to 2017 and corresponding non-insider trading samples in Chinese security market. Next, by using the PCA, indicator dimension is reduced and principal components are extracted. Then, relations between insider trading samples and principal components are learnt by the RF algorithm. In the identification phase, the trained PCA-RF model is applied to classify the insider trading and non-insider trading samples, as well as analyzing the relative importance of indicators for insider trading identification. Experimental results showed us that under the 30-, 60-, and 90-days time window lengths, recall results of the proposed method for the out-of-samples identification were 73.53%, 83.87%, and 79.41%, respectively. We further investigate the voting threshold of RF for the proposed method, and we found when the voting threshold of RF was increased to more than 70%, the proposed method produced identification accuracy up to more than 90%. In addition, the relative importance result of RF indicated that three indicators were crucial for insider trading identification. Moreover, identification accuracy and efficiency of the proposed method were substantially superior to benchmark methods. In summary, experimental results indicated that the proposed method could be efficiently applied to Chinese security market. Thus, the proposed method can provide useful suggestions to market regulators for insider trading investigations.

Keywords: Chinese security market; Insider trading identification; Intelligent system; Principal component analysis; Random forest (search for similar items in EconPapers)
Date: 2021
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Citations: View citations in EconPapers (3)

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DOI: 10.1007/s10614-020-09970-8

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