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Data analytic approach for manipulation detection in stock market

Zhai, J; Cao, Yi; Ding, X

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Authors

J Zhai

Yi Cao

X Ding



Abstract

The term “price manipulation” is used to describe the actions of “rogue” traders who employ carefully designed trading tactics to incur equity prices up or down to make profit. Such activities damage the proper functioning, integrity, and stability of the financial markets. In response to that, the regulators proposed new regulatory guidance to prohibit such activities on the financial markets. However, due to the lack of existing research and the implementation complexity, the application of those regulatory guidance, i.e. MiFID II in EU, is postponed to 2018. The existing studies exploring this issue either focus on empirical analysis of such cases, or propose detection models based on certain assumptions. The effective methods, based on analysing trading behaviour data, are not yet studied. This paper seeks to address that gap, and provides two data analytics based models. The first one, static model, detects manipulative behaviours through identifying abnormal patterns of trading activities. The activities are represented by transformed limit orders, in which the transformation method is proposed for partially reducing the non-stationarity nature of the financial data. The second one is hidden Markov model based dynamic model, which identifies the sequential and contextual changes in trading behaviours. Both models are evaluated using real stock tick data, which demonstrate their effectiveness on identifying a range of price manipulation scenarios, and outperforming the selected benchmarks. Thus, both models are shown to make a substantial contribution to the literature, and to offer a practical and effective approach to the identification of market manipulation.

Citation

Zhai, J., Cao, Y., & Ding, X. (2018). Data analytic approach for manipulation detection in stock market. Review of Quantitative Finance and Accounting, 50(3), 897-932. https://doi.org/10.1007/s11156-017-0650-0

Journal Article Type Article
Acceptance Date Jun 9, 2017
Online Publication Date Jul 3, 2017
Publication Date Apr 1, 2018
Deposit Date Jul 4, 2017
Publicly Available Date Jul 3, 2018
Journal Review of Quantitative Finance and Accounting
Print ISSN 0924-865X
Electronic ISSN 1573-7179
Publisher Springer Verlag
Volume 50
Issue 3
Pages 897-932
DOI https://doi.org/10.1007/s11156-017-0650-0
Publisher URL http://dx.doi.org/10.1007/s11156-017-0650-0
Related Public URLs https://link.springer.com/journal/11156

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