A Discrete Time Series Model for High Frequency Financial Data

H. Mitchell
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Abstract

In this paper a flexible model for correlation in high frequency data is proposed, which maintains the data’s discrete nature and captures features such as asymmetry and excess zeros. The model uses an a theoretical approach based on that of an ARIMA model. This model works with price changes and does not restrict the size of the price change. The model employs a combination of different distributions to model price changes. An unbounded discrete distribution was used to model the size of the change combined with a multinomial to determine the direction of the change and provide an excess number of zeros. A binominal thinning operator was used to model the correlation. The model was estimated for correlation in high frequency share price and exchange rate data. Results are presented for seven data sets. Two have an excess number of zeros and four exhibit asymmetry. An ARCH equation can be readily incorporated into the model, but the results here demonstrate that an excess number of zeros can be misinterpreted as ARCH when a continuous model is fitted.
高频金融数据的离散时间序列模型
本文提出了一种灵活的高频数据相关模型,该模型既保持了数据的离散性,又捕获了数据的不对称性和多余零等特征。该模型采用了基于ARIMA模型的理论方法。该模型适用于价格变化,不限制价格变化的大小。该模型采用不同分布的组合来模拟价格变化。使用无界离散分布来模拟变化的大小,并结合多项来确定变化的方向并提供多余的零数。使用二项稀疏算子对相关性进行建模。对高频股价与汇率数据的相关性进行了模型估计。给出了七个数据集的结果。两个有多余的零,四个有不对称。ARCH方程可以很容易地纳入模型,但这里的结果表明,当拟合连续模型时,多余的零数可能被误解为ARCH。
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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