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LARGE AND MODERATE DEVIATIONS PRINCIPLES FOR KERNEL ESTIMATION OF A MULTIVARIATE DENSITY AND ITS PARTIAL DERIVATIVES

机译:多元估计及其部分导数的核估计的大中度偏差原理

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摘要

This paper studies the large deviations behaviour of the kernel estimator of a probability density f, by considering the case when the kernel takes negative values. It establishes large and moderate deviations principles for the kernel estimators of the partial derivatives of f. The estimators of the derivatives exhibit a quadratic behaviour for both the large and the moderate deviations scales, whereas for the density estimator there is a classical gap between the large deviations and the moderate deviations asymptotics.
机译:通过考虑核取负值的情况,研究概率密度为f的核估计量的大偏差行为。它为f的偏导数的核估计量建立了大和中等偏差原理。导数的估计量在大和中等偏差量表上都表现出二次行为,而对于密度估计量,在大偏差和中偏差渐近之间存在经典差距。

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