Collusion Set Detection within the Stock Market using Graph Clustering & Anomaly Detection

Ranika N. Madurawe, B.K.D Irosh Jayaweera, Thamindu Jayawickrama, I. Perera, Rasika Withanawasam
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引用次数: 1

Abstract

Manipulations that happen within the financial markets directly affect the stability of the market. Therefore detection of manipulation ensures fair market operation. Most of these manipulations occur in the guise of collusion. Collusion in financial markets involves a group of market participants trading amongst themselves to execute a manipulative trading strategy. Most existing models do not consider the seemingly rare yet normal transactions into account when proposing collusive groups. Neither have they considered the effect of time within collusion. This work proposes a model to detect collusion in stock markets through the application of graph mining and anomaly detection. Creation of investor graphs denoting the relationships between investors and timely sampling of these graphs using Graph mining allows this research to consider the effect of time in collusion, subsequent anomaly detection allows for the filtering of results to avoid misnaming normal behaviour within the stock market. This research presents that Graph mining techniques such OPTICS and Spectral clustering perform consistently well to extract meaningful collusive groups, while the Local Outlier Factors work well as an Anomaly detector to filter out results received from Graph Clustering. The combination of these methods creates a pipeline which can outperform existing methodologies.
基于图聚类和异常检测的股票市场合谋集检测
金融市场内部发生的操纵行为直接影响到市场的稳定。因此,对操纵行为的发现确保了市场的公平运行。这些操纵大多是在勾结的幌子下发生的。金融市场中的串通指的是一群市场参与者相互交易,以执行一种操纵性的交易策略。大多数现有模型在提出合谋集团时,并没有考虑到看似罕见但正常的交易。他们也没有考虑到合谋中时间的影响。本文提出了一种基于图挖掘和异常检测的股票市场共谋检测模型。创建投资者图表示投资者之间的关系,并使用图挖掘对这些图进行及时采样,使本研究能够考虑时间在共谋中的影响,随后的异常检测允许对结果进行过滤,以避免错误命名股票市场中的正常行为。本研究表明,光学和光谱聚类等图挖掘技术在提取有意义的共谋组方面表现一致,而局部离群因子作为异常检测器可以很好地过滤从图聚类中获得的结果。这些方法的组合创建了一个可以超越现有方法的管道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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