非线性时间序列阈值估计研究进展

Ngai Hang, Y. Kutoyants
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引用次数: 10

摘要

本文讨论了贝叶斯框架下非线性时间序列模型阈值估计的几个重要问题。本文从计算阈值自回归模型的极大似然和贝叶斯估计开始。结果表明,在这类奇异估计问题中,贝叶斯估计的渐近效率优于极大似然估计。为了说明这些估计量的性质并解释所提出的方法,本文首先研究了一个含高斯噪声的线性阈值自回归模型。然后,本文将这一思想推广到其他非线性和非高斯模型,并举例说明了极限似然比范式,它适用于更广泛的非线性模型。本文还研究了鲁棒性问题和窄带限制观测窗口的可能性,这使得人们可以获得渐近有效的估计量。最后,本文指出了如何将这些结果从TAR(1)模型推广到具有多个阈值的高阶TAR(p)模型。文章最后讨论了其他相关问题,并通过数值模拟说明了方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recent Developments of Threshold Estimation for Nonlinear Time Series
In this article, several important problems of threshold estimation in a Bayesian framework for nonlinear time series models are discussed. The paper starts with the issue of calculating the maximum likelihood and the Bayesian estimators for threshold autoregressive models. It turns out that the asymptotic efficiency of the Bayesian estimators in this type of singular estimation problems is superior than the maximum likelihood estimators. To illustrate the properties of these estimators and to explain the proposed method, the paper begins with the study of a linear threshold autoregressive model with i.i.d. Gaussian noise. The paper then extends the idea to other nonlinear and non-Gaussian models and illustrates the paradigm of limiting likelihood ratio, which is applicable to a much wider class of nonlinear models. The article also investigates the robustness issue and the possibility of restricting the observation window by narrow bands, which allows one to obtain asymptotically efficient estimators. Finally, the paper indicates how these results can be generalized from a TAR(1) model to a higher-order TAR(p) model with multiple thresholds. The paper concludes with a discussion of other related problems and illustrates the methodology by numerical simulations.
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