使用聚合数据重建订单流

I. Toke
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引用次数: 16

摘要

在这项工作中,我们调查了TRTH数据库提供的三个不同交易所(巴黎-泛欧交易所,伦敦和法兰克福-德意志证券交易所)的几只股票的5年时间内的逐点数据。我们使用一种简单的算法来帮助交易和报价数据源的同步,根据时间段和交易所的不同,对基本过程进行了增强,显示出了显著的增强。我们表明,对该算法性能的分析是评估聚合数据库质量的一种取证工具:我们能够通过数据跟踪在研究的交换中发生的一些重大技术变化。我们还说明了这样一个事实,即在重建订单流时所做的选择对随后根据此类数据校准的定量模型有影响。我们的研究还提供了有关贸易签名的要素,并且我们能够对标准Lee-Ready程序进行更精细的研究,并在使用该方法时应如何选择最佳滞后方面提供了新的要素。研究结果与财务推理和对订单流的说明性泊松模型的分析一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction of Order Flows using Aggregated Data
In this work we investigate tick-by-tick data provided by the TRTH database for several stocks on three different exchanges (Paris - Euronext, London and Frankfurt - Deutsche B\"orse) and on a 5-year span. We use a simple algorithm that helps the synchronization of the trades and quotes data sources, providing enhancements to the basic procedure that, depending on the time period and the exchange, are shown to be significant. We show that the analysis of the performance of this algorithm turns out to be a a forensic tool assessing the quality of the aggregated database: we are able to track through the data some significant technical changes that occurred on the studied exchanges. We also illustrate the fact that the choices made when reconstructing order flows have consequences on the quantitative models that are calibrated afterwards on such data. Our study also provides elements on the trade signature, and we are able to give a more refined look at the standard Lee-Ready procedure, giving new elements on the way optimal lags should be chosen when using this method. The findings are in line with both financial reasoning and the analysis of an illustrative Poisson model of the order flow.
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