广义自回归条件异方差模型的条件分位数估计

IF 3 1区 数学 Q1 STATISTICS & PROBABILITY Journal of the American Statistical Association Pub Date : 2009-12-01 DOI:10.1198/jasa.2009.tm09170
Zhijie Xiao, R. Koenker
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引用次数: 130

摘要

条件分位数估计是现代风险管理的重要组成部分。尽管广义自回归条件异方差(GARCH)过程已被证明在金融数据建模方面非常成功,但人们普遍认为,考虑能够更灵活地表示条件回报分布的不对称和尾部行为的更广泛的过程类别将是有用的。本文研究了GARCH模型条件分位数的估计方法。GARCH模型的分位数回归估计是高度非线性的;我们提出了一种简单有效的线性GARCH时间序列分位数回归估计的两步方法。在第一步中,我们通过组合不同分位数上的信息,对GARCH模型使用分位数自回归筛近似。然后在时间序列尺度过程第一阶段最小距离估计的基础上,对GARCH模型进行第二阶段估计。研究了筛法近似、最小距离估计和最终分位数回归估计的渐近性质。这些结果是独立的兴趣,并在其他分位数回归设置有应用。蒙特卡罗和经验应用结果表明,所提出的估计方法优于现有的一些条件分位数估计方法。
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Conditional Quantile Estimation for Generalized Autoregressive Conditional Heteroscedasticity Models
Conditional quantile estimation is an essential ingredient in modern risk management. Although generalized autoregressive conditional heteroscedasticity (GARCH) processes have proven highly successful in modeling financial data, it is generally recognized that it would be useful to consider a broader class of processes capable of representing more flexibly both asymmetry and tail behavior of conditional returns distributions. In this article we study estimation of conditional quantiles for GARCH models using quantile regression. Quantile regression estimation of GARCH models is highly nonlinear; we propose a simple and effective two-step approach of quantile regression estimation for linear GARCH time series. In the first step, we use a quantile autoregression sieve approximation for the GARCH model by combining information over different quantiles. Then second-stage estimation for the GARCH model is carried out based on the first-stage minimum distance estimation of the scale process of the time series. Asymptotic properties of the sieve approximation, the minimum distance estimators, and the final quantile regression estimators using generated regressors are studied. These results are of independent interest and have applications in other quantile regression settings. Monte Carlo and empirical application results indicate that the proposed estimation methods outperform some existing conditional quantile estimation methods.
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来源期刊
CiteScore
7.50
自引率
8.10%
发文量
168
审稿时长
12 months
期刊介绍: Established in 1888 and published quarterly in March, June, September, and December, the Journal of the American Statistical Association ( JASA ) has long been considered the premier journal of statistical science. Articles focus on statistical applications, theory, and methods in economic, social, physical, engineering, and health sciences. Important books contributing to statistical advancement are reviewed in JASA . JASA is indexed in Current Index to Statistics and MathSci Online and reviewed in Mathematical Reviews. JASA is abstracted by Access Company and is indexed and abstracted in the SRM Database of Social Research Methodology.
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