ARFIMA模型分数参数估计的比较研究

IF 0.3 Q4 ECONOMICS
Ammar Muayad Saber, Rabab Abdulrida Saleh
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引用次数: 0

摘要

长记忆分析是计量经济学和时间序列中最活跃的研究领域之一,人们已经引入了各种方法来识别和估计部分积分时间序列中的长记忆参数。用于表示具有长记忆的时间序列的最常用模型之一是ARFIMA(自动回归分数积分移动平均模型),其差异是一个称为分数参数的分数数字。为了分析和确定ARFIMA模型,必须对分形参数进行估计。分数参数估计有许多方法。在本研究中,估计方法分为间接方法,首先估计Hurst参数,然后根据两者之间的关系估计分数阶积分参数。直接方法不依赖Hurst参数直接估计分数阶积分参数,多为半参数方法。本文采用了几种最常用的直接方法(Geweke-Porter-Hudak、Smoothed Geweke-Porter-Hudak、Local Whittle、小波和加权小波),采用不同(d)值和不同时间序列大小的模拟方法来估计分数模量。采用均方误差(MSE)对两种方法进行比较。结果表明,估计分数参数的最佳方法是(局部惠特尔)。ARFIMA模型由MATLAB统计程序编制的函数生成
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Study for Estimate Fractional Parameter of ARFIMA Model
      Long memory analysis is one of the most active areas in econometrics and time series where various methods have been introduced to identify and estimate the long memory parameter in partially integrated time series. One of the most common models used to represent time series that have a long memory is the ARFIMA (Auto Regressive Fractional Integration Moving Average Model) which diffs are a fractional number called the fractional parameter. To analyze and determine the ARFIMA model, the fractal parameter must be estimated. There are many methods for fractional parameter estimation. In this research, the estimation methods were divided into indirect methods, where the Hurst parameter is estimated first, and then the fractional integration parameter is estimated from it by a relation between them. As for direct methods, the fractional integration parameter is estimated directly without relying on Hurst's parameter, and most of them are semi parametric methods. In this paper, some of the most common direct methods were used to estimate the fraction modulus namely (Geweke-Porter-Hudak, Smoothed Geweke-Porter-Hudak, Local Whittle, Wavelet and weighted wavelet), using simulation method with different value of (d) and different size of time series. The comparison between the methods was done using the mean squared error (MSE). It turns out that the best methods to estimate the fractional parameter is (Local Whittle).       The ARFIMA model was generated by a function programmed by the MATLAB statistical program
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