订单流动力学预测订单取消和应用程序,以检测市场操纵

High Frequency Pub Date : 2019-01-16 DOI:10.1002/hf2.10026
Enrique Martínez Miranda, Steve Phelps, Matthew J. Howard
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引用次数: 1

摘要

在这项工作中,提出了一种方法,通过分析真实的订单流市场数据,在最优事件时间范围内检测和预测大订单的取消意图。我们通过重建限价订单的完整历史来实现这一点,并将案例表述为二元分类监督学习问题。本研究的结果表明,使用订单微观结构层面的信息比使用宏观结构层面的信息更有效地预测和检测大订单的取消,并且预测取消的效果略优于检测案例。有了这个,我们在识别与价格操纵有关的潜在订单方面向前迈出了一步,但结果可以被机构交易员用来预测大订单对对手市场的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Order flow dynamics for prediction of order cancelation and applications to detect market manipulation

Order flow dynamics for prediction of order cancelation and applications to detect market manipulation

In this work, a methodology is proposed to detect and predict the intention of cancelation of a large order at an optimal event-time horizon by analyzing real order flow market data. We achieve this by reconstructing the full history of the limit order book and formulate the case as a binary classification supervised learning problem. The results presented in this study suggest that using the information at the microstructure level of the order book is highly efficient for predicting and detecting the cancelation of the large order than using information at the macrostructure level, and that predicting the cancelation is marginally outperformed by the detection case. With this, we make a step forward in identifying potential orders related to price manipulation but the results can be used by institutional traders to anticipate adversary market impact produced by large orders.

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