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Nonparametric quasi-maximum likelihood estimation for Gaussian locally stationary processes

机译:高斯局部平稳过程的非参数拟极大似然估计

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摘要

This paper deals with nonparametric maximum likelihood estimation for Gaussian locally stationary processes. Our nonparametric MLE is constructed by minimizing a frequency domain likelihood over a class of functions. The asymptotic behavior of the resulting estimator is studied. The results depend on the richness of the class of functions. Both sieve estimation and global estimation are considered. Our results apply, in particular, to estimation under shape constraints. As an example, autoregressive model fitting with a monotonic variance function is discussed in detail, including algorithmic considerations. A key technical tool is the time-varying empirical spectral process indexed by functions. For this process, a Bernstein-type exponential inequality and a central limit theorem are derived. These results for empirical spectral processes are of independent interest.
机译:本文讨论了高斯局部平稳过程的非参数最大似然估计。我们的非参数MLE是通过最小化一类函数的频域似然性来构造的。研究了所得估计量的渐近行为。结果取决于功能类别的丰富性。筛分估计和全局估计都被考虑。我们的结果尤其适用于形状约束下的估计。例如,详细讨论了具有单调方差函数的自回归模型,包括算法方面的考虑。一个关键的技术工具是随函数变化的时变经验光谱过程。对于此过程,得出了伯恩斯坦型指数不等式和中心极限定理。这些经验光谱过程的结果具有独立的意义。

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