Mining Exceptional Activity Patterns in Microstructure Data

Yuming Ou, Longbing Cao, C. Luo, Li Liu
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引用次数: 2

Abstract

Market Surveillance plays an important role in maintaining market integrity, transparency and fairness. The existing trading pattern analysis only focuses on interday data which discloses explicit and high-level market dynamics. In the mean time, the existing market surveillance systems are facing challenges of misuse, mis-disclosure and misdealing of information, announcement and order in one market or crossing multiple markets. Therefore, there is a crucial need to develop workable methods for smart surveillance. To deal with such issues, we propose an innovative methodology - microstructure activity pattern analysis. Based on this methodology, a case study in identifying exceptional microstructure activity patterns is carried out. The experiments on real-life stock data show that microstructure activity pattern analysis opens a new and effective means for crucially understanding and analysing market dynamics. The resulting findings such as exceptional microstructure activity patterns can greatly enhance the learning, detection, adaption and decision-making capability of market surveillance.
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挖掘微观结构数据中的异常活动模式
市场监管在维护市场诚信、透明和公平方面发挥着重要作用。现有的交易模式分析只侧重于揭示明确和高层次市场动态的盘中数据。与此同时,现有的市场监管制度也面临着单一市场或跨市场的信息、公告和指令滥用、误披露和不当处理的挑战。因此,迫切需要开发可行的智能监控方法。为了解决这些问题,我们提出了一种创新的方法——微观结构活动模式分析。基于该方法,进行了识别异常微观结构活动模式的案例研究。实际股票数据的实验表明,微观结构活动模式分析为理解和分析市场动态提供了一种新的有效手段。研究结果如异常的微观结构活动模式,可以极大地增强市场监测的学习、发现、适应和决策能力。
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