Collusion set detection using a quasi hidden Markov model
In stock market, a collusion set is defined as a group of individuals or organizations who act cooperatively with an intention of manipulating security price. Collusion-based malpractices impose large costs on the economy, but few techniques have yet been developed for collusion set detection. In th...
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sg-smu-ink.soe_research-29302020-04-02T03:57:48Z Collusion set detection using a quasi hidden Markov model WU, Zhengxiao WU, Xiaoyu In stock market, a collusion set is defined as a group of individuals or organizations who act cooperatively with an intention of manipulating security price. Collusion-based malpractices impose large costs on the economy, but few techniques have yet been developed for collusion set detection. In this article, we propose a quasi hidden Markov model (QHMM) approach. In particular, we consider the transactions as a marked point process with hidden states, and we calculate the class conditional probabilities to identify the malicious transactions. The detection algorithms associated with the model are recursive, hence suitable for online monitoring and detection. The QHMM approach has several advantages over the existent methods. For example, it incorporates the transaction times into the model naturally, and the model parameters can be estimated from the data systematically. We illustrate the models with examples and the QHMM performs well in our numerical experiments. 2013-04-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1931 info:doi/10.4310/SII.2013.v6.n1.a6 https://ink.library.smu.edu.sg/context/soe_research/article/2930/viewcontent/Collusion_set_detection_using_a_quasi_hidden_Markov_model__1_.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Collusion set Fraud detection Hidden Markov model Quasi hidden Markov model Econometrics Economics |
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Collusion set Fraud detection Hidden Markov model Quasi hidden Markov model Econometrics Economics WU, Zhengxiao WU, Xiaoyu Collusion set detection using a quasi hidden Markov model |
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In stock market, a collusion set is defined as a group of individuals or organizations who act cooperatively with an intention of manipulating security price. Collusion-based malpractices impose large costs on the economy, but few techniques have yet been developed for collusion set detection. In this article, we propose a quasi hidden Markov model (QHMM) approach. In particular, we consider the transactions as a marked point process with hidden states, and we calculate the class conditional probabilities to identify the malicious transactions. The detection algorithms associated with the model are recursive, hence suitable for online monitoring and detection. The QHMM approach has several advantages over the existent methods. For example, it incorporates the transaction times into the model naturally, and the model parameters can be estimated from the data systematically. We illustrate the models with examples and the QHMM performs well in our numerical experiments. |
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WU, Zhengxiao WU, Xiaoyu |
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WU, Zhengxiao WU, Xiaoyu |
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WU, Zhengxiao |
title |
Collusion set detection using a quasi hidden Markov model |
title_short |
Collusion set detection using a quasi hidden Markov model |
title_full |
Collusion set detection using a quasi hidden Markov model |
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Collusion set detection using a quasi hidden Markov model |
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Collusion set detection using a quasi hidden Markov model |
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collusion set detection using a quasi hidden markov model |
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Institutional Knowledge at Singapore Management University |
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2013 |
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https://ink.library.smu.edu.sg/soe_research/1931 https://ink.library.smu.edu.sg/context/soe_research/article/2930/viewcontent/Collusion_set_detection_using_a_quasi_hidden_Markov_model__1_.pdf |
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