Directed Acyclic Graph Based Information Shares for Price Discovery

Sebastiano Michele Zema
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引用次数: 2

Abstract

The possibility to measure the contribution of agents and exchanges to the price formation process in financial markets acquired increasing importance in the literature. In this paper I propose to exploit a data-driven approach to identify structural vector error correction models (SVECM) typically used for price discovery. Exploiting the non-Normal distributions of the variables under consideration, I propose a variant of the widespread Information Share measure, which I will refer to as the Directed Acyclic Graph based-Information Shares(DAG-IS), which can identify the leaders and the followers in the price formation process through the exploitation of a causal discovery algorithm well established in the area of machine learning. The approach will be illustrated from a semi-parametric perspective, solving the identification problem with no need to increase the computational complexity which usually arises when working at incredibly short time scales. Finally, an empirical application on IBM intraday data will be provided.
基于有向无环图的信息共享价格发现
衡量代理人和交易所对金融市场价格形成过程的贡献的可能性在文献中变得越来越重要。在本文中,我建议利用数据驱动的方法来识别通常用于价格发现的结构向量误差校正模型(SVECM)。利用所考虑的变量的非正态分布,我提出了广泛的信息共享度量的一种变体,我将其称为基于有向无环图的信息共享(DAG-IS),它可以通过利用在机器学习领域建立良好的因果发现算法来识别价格形成过程中的领导者和追随者。该方法将从半参数的角度进行说明,在不需要增加计算复杂性的情况下解决识别问题,这通常会在非常短的时间尺度上工作。最后,本文将对IBM即日数据进行实证应用。
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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