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Non-Parametric Sequential Estimation of a Regression Function Based on Dependent Observations

机译:基于相依观测值的回归函数的非参数顺序估计

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This article presents a sequential estimation procedure for an unknown regression function. Observed regressors and noises of the model are supposed to be dependent and form sequences of dependent numbers. Two types of estimators are considered. Both estimators are constructed on the basis of Nadaraya-Watson kernel estimators. First, sequential estimators with given bias and mean square error are defined. According to the sequential approach the duration of observations is a special stopping time. Then on the basis of these estimators of a regression function, truncated sequential estimators on a time interval of a fixed length are constructed. At the same time, the variance of these estimators is controlled by a (non-asymptotic) bound. In addition to nonasymptotic properties, the limiting behavior of presented estimators is investigated. It is shown, in particular, that by the appropriate chosen bandwidths both estimators have optimal (as compared to the case of independent data) rates of convergence of Nadaraya-Watson kernel estimators.
机译:本文介绍了未知回归函数的顺序估计过程。观察到的模型回归和噪声被认为是相关的,并形成相关数字的序列。考虑两种类型的估计量。两种估计器都是基于Nadaraya-Watson核估计器构造的。首先,定义具有给定偏差和均方误差的顺序估计量。根据顺序方法,观察的持续时间是一个特殊的停止时间。然后,基于这些回归函数估计量,在固定长度的时间间隔上构造出截断的顺序估计量。同时,这些估计量的方差由(非渐近)边界控制。除了非渐近性质,还对给出的估计量的极限行为进行了研究。尤其表明,通过适当选择的带宽,两个估计量都具有Nadaraya-Watson核估计量的最优收敛速度(与独立数据相比)。

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