Samir Ben Hariz , Alexandre Brouste , Chunhao Cai , Marius Soltane
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引用次数: 0
摘要
本文考虑了一阶分数自回归模型参数的联合估计。为了得到一个渐近有效的估计器,本文考虑了一个一步程序,该程序具有收敛速度小于 n 的初始猜测估计器和奇异的渐近联合分布。该估计器的计算速度比最大似然估计器或惠特尔估计器更快,因此可以更快地进行大样本推断。论文还通过蒙特卡罗模拟说明了这种方法在有限大小样本上的性能。
Fast and asymptotically-efficient estimation in an autoregressive process with fractional type noise
This paper considers the joint estimation of the parameters of a first-order fractional autoregressive model. A one-step procedure is considered in order to obtain an asymptotically-efficient estimator with an initial guess estimator with convergence speed lower than and singular asymptotic joint distribution. This estimator is computed faster than the maximum likelihood estimator or the Whittle estimator and therefore allows for faster inference on large samples. The paper also illustrates the performance of this method on finite-size samples via Monte Carlo simulations.
期刊介绍:
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