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Wavelet estimation in time-varying coefficient time series models with measurement errors

机译:具有测量误差的时变系数时间序列模型中的小波估计

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The article studies a time-varying coefficient time series model in which some of the covariates are measured with additive errors. In order to overcome the bias of estimator of the coefficient functions when measurement errors are ignored, we propose a modified least squares estimator based on wavelet procedures. The advantage of the wavelet method is to avoid the restrictive smoothness requirement for varying-coefficient functions of the traditional smoothing approaches, such as kernel and local polynomial methods. The asymptotic properties of the proposed wavelet estimators are established under the -mixing conditions and without specifying the error distribution. These results can be used to make asymptotically valid statistical inference.
机译:本文研究了时变系数时间序列模型,其中一些协变量带有加性误差。为了克服测量误差被忽略时系数函数估计量的偏差,我们提出了一种基于小波过程的改进最小二乘估计量。小波方法的优点是避免了对传统平滑方法(例如核和局部多项式方法)的变系数函数的限制性平滑要求。建议的小波估计量的渐近性质是在-混合条件下建立的,并且没有指定误差分布。这些结果可用于进行渐近有效的统计推断。

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