Bootstrapping the log-periodogram estimator of the long-memory parameter: is it worth weighting

IF 0.4 Q4 ECONOMICS
K. Patterson, S. Heravi
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引用次数: 0

Abstract

Estimation of the long-memory parameter from the log-periodogram (LP) regression, due to Geweke and Porter-Hudak (GPH), is a simple and frequently used method of semi-parametric estimation. However, the simple LP estimator suffers from a finite sample bias that increases with the dependency in the short-run component of the spectral density. In a modification of the GPH estimator, Andrews and Guggenberger, AG (2003) suggested a bias-reduced estimator, but this comes at the cost of inflating the variance. To avoid variance inflation, Guggenberger and Sun (2004, 2006) suggested a weighted LP (WLP) estimator using bands of frequencies, which potentially improves upon the simple LP estimator. In all cases a key parameter in these methods is the need to choose a frequency bandwidth, m, which confines the chosen frequencies to be in the ‘neighbourhood’ of zero. GPH suggested a ‘square-root’ rule of thumb that has been widely used, but has no optimality characteristics. An alternative, due to Hurvich and Deo (1999), is to derive the root mean square error (rmse) optimising value of m, which depends upon an unknown parameter, although that can be consistently estimated to make the method feasible. More recently, Arteche and Orbe (2009a,b), in the context of the GPH estimator, suggested a promising bootstrap method, based on the frequency domain, to obtain the rmse value of m that avoids estimating the unknown parameter. We extend this bootstrap method to the AG and WLP estimators and to consideration of bootstrapping in the frequency domain (FD) and the time domain (TD) and, in each case, to ‘blind’ and ‘local’ versions. We undertake a comparative simulation analysis of these methods for relative performance on the dimensions of bias, rmse, confidence interval width and fidelity.
启动长记忆参数的对数周期图估计器:是否值得加权
基于Geweke和Porter-Hudak (GPH)的对数周期图(LP)回归的长记忆参数估计是一种简单且常用的半参数估计方法。然而,简单的LP估计器受到有限样本偏差的影响,这种偏差随着谱密度的短期分量的依赖而增加。在对GPH估计器的修改中,Andrews和Guggenberger, AG(2003)提出了一个减少偏差的估计器,但这是以膨胀方差为代价的。为了避免方差膨胀,Guggenberger和Sun(2004,2006)提出了一种使用频带的加权LP (WLP)估计器,这可能会改进简单的LP估计器。在所有情况下,这些方法中的一个关键参数是需要选择一个频率带宽m,它将所选频率限制在零的“邻域”内。GPH提出了一个被广泛使用的“平方根”经验法则,但没有最优性特征。Hurvich和Deo(1999)提出的另一种方法是推导m的均方根误差(rmse)优化值,该值取决于一个未知参数,尽管可以一致地估计该参数以使该方法可行。最近,Arteche和Orbe (2009a,b)在GPH估计器的背景下,提出了一种基于频域的有前途的bootstrap方法,以获得m的rmse值,从而避免了对未知参数的估计。我们将这种自举方法扩展到AG和WLP估计器,并考虑频域(FD)和时域(TD)的自举,在每种情况下,都是“盲”和“本地”版本。我们对这些方法在偏差、均方根误差、置信区间宽度和保真度方面的相对性能进行了比较模拟分析。
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来源期刊
CiteScore
0.60
自引率
0.00%
发文量
26
期刊介绍: IJCEE explores the intersection of economics, econometrics and computation. It investigates the application of recent computational techniques to all branches of economic modelling, both theoretical and empirical. IJCEE aims at an international and multidisciplinary standing, promoting rigorous quantitative examination of relevant economic issues and policy analyses. The journal''s research areas include computational economic modelling, computational econometrics and statistics and simulation methods. It is an internationally competitive, peer-reviewed journal dedicated to stimulating discussion at the forefront of economic and econometric research. Topics covered include: -Computational Economics: Computational techniques applied to economic problems and policies, Agent-based modelling, Control and game theory, General equilibrium models, Optimisation methods, Economic dynamics, Software development and implementation, -Econometrics: Applied micro and macro econometrics, Monte Carlo simulation, Robustness and sensitivity analysis, Bayesian econometrics, Time series analysis and forecasting techniques, Operational research methods with applications to economics, Software development and implementation.
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