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Nonparametric least squares estimation in derivative families

机译:导数族中的非参数最小二乘估计

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摘要

Cost function estimation often involves data on a function and a family of its derivatives. Such data can substantially improve convergence rates of nonparametric estimators. We propose series-type estimators which incorporate the various derivative data into a single nonparametric least-squares procedure. Convergence rates are obtained and it is shown that for low-dimensional cases, much of the beneficial impact is realized even if only data on ordinary first-order partials are available. In instances where root-n consistency is attained, smoothing parameters can often be chosen very easily, without resort to cross-validation. Simulations and an illustration of cost function estimation are included.
机译:成本函数估计通常涉及函数及其派生类的数据。这样的数据可以大大提高非参数估计量的收敛速度。我们提出了将各种导数数据合并到单个非参数最小二乘法中的级数估计器。获得了收敛速度,并且表明对于低维情况,即使仅可获得有关普通一阶部分的数据,也可以实现许多有益的影响。在达到根n一致性的情况下,通常可以很容易地选择平滑参数,而无需使用交叉验证。包括仿真和成本函数估计的说明。

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