Application of measures of heavy-tailedness in problems for analysis of financial time series

Q3 Economics, Econometrics and Finance
Lilia Rodionova, Elena Kopnova
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引用次数: 0

Abstract

An important feature when working with financial data is the fact that the residuals of GARCH-models often have fatter tails than the tails of a normal distribution due to the large number of “outliers” in the data. This requires more detailed study. Kurtosis and quantile-based measure of heavy-tailedness were analyzed and compared in the article in relation to the problem of choosing the GARCH(1,1)-model specification. The data of indices of the Moscow Exchange were considered for the period from April 01, 2019 to February 22, 2022. Kurtosis values ​​ranged from 3 to 52. Empirical data showed that kurtosis was very sensitive to “outliers” in the data, which made it difficult to make assumptions about the distribution of model residuals. The approach considered in this paper based on the heavy-tailedness measure made it possible to justify the choice of degrees of freedom of the t-distribution for the model residuals to explain the fat tails in financial data. It was found that GARCH(1,1)-models with t(5)-distribution in the residuals are common.
重尾性测度在金融时间序列分析问题中的应用
在处理金融数据时,一个重要的特征是garch模型的残差通常比正态分布的尾部更肥,因为数据中有大量的“异常值”。这需要更详细的研究。本文针对GARCH(1,1)模型规范的选择问题,对峰度和基于分位数的重尾度度量进行了分析和比较。莫斯科交易所指数的数据被认为是2019年4月1日至2022年2月22日期间的数据。峰度值为3 ~ 52。经验数据表明,峰度对数据中的“异常值”非常敏感,这使得很难对模型残差的分布做出假设。本文考虑的基于重尾性度量的方法可以证明模型残差的t分布的自由度选择是合理的,以解释金融数据中的肥尾。发现残差中t(5)分布的GARCH(1,1)-模型是常见的。
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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来源期刊
Business Informatics
Business Informatics Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
1.50
自引率
0.00%
发文量
21
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