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Collusion set detection using a quasi hidden Markov model

机译:使用准隐马尔可夫模型的共谋集检测

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In the 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.
机译:在股票市场中,串通集被定义为一组旨在操纵证券价格而协同行动的个人或组织。基于共谋的不当行为给经济带来了沉重的成本,但尚未开发出用于共谋集检测的技术。在本文中,我们提出了一种准隐马尔可夫模型(QHMM)方法。特别是,我们将交易视为具有隐藏状态的标记过程,并计算类别条件概率以识别恶意交易。与模型关联的检测算法是递归的,因此适用于在线监视和检测。与现有方法相比,QHMM方法具有多个优点。例如,它将交易时间自然地合并到模型中,并且可以从数据中系统地估计模型参数。我们用示例说明模型,并且QHMM在我们的数值实验中表现良好。

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