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Minimum Message Length Order Selection and Parameter Estimation of Moving Average Models

机译:移动平均模型的最小消息长度顺序选择和参数估计

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摘要

This paper presents a novel approach to estimating a moving average model of unknown order from an observed time series based on the minimum message length principle (MML). The nature of the exact Fisher information matrix for moving average models leads to problems when used in the standard Wallace-Freeman message length approximation, and this is overcome by utilising the asymptotic form of the information matrix. By exploiting the link between partial autocorrelations and invertible moving average coefficients an efficient procedure for finding the MML moving average coefficient estimates is derived. The MML estimating equations are shown to be free of solutions at the boundary of the invertibility region that result in the troublesome "pile-up" effect in maximum likelihood estimation. Simulations demonstrate the excellent performance of the MML criteria in comparison to standard moving average inference procedures in terms of both parameter estimation and order selection, particularly for small sample sizes.
机译:本文提出了一种基于最小消息长度原理(MML)从观察到的时间序列估计未知顺序的移动平均模型的新颖方法。在标准的Wallace-Freeman消息长度近似中使用时,移动平均模型的精确Fisher信息矩阵的性质会导致问题,并且可以通过利用信息矩阵的渐近形式来克服这一问题。通过利用部分自相关与可逆移动平均系数之间的联系,推导了一种用于找到MML移动平均系数估计值的有效过程。 MML估计方程式在可逆区域的边界处没有解,这在最大似然估计中导致麻烦的“堆积”效应。仿真结果表明,与标准移动平均推理程序相比,MML标准在参数估计和顺序选择方面均具有出色的性能,特别是对于小样本量。

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