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Upper Bounds for Errors of Estimators in a Problem of Nonparametric Regression: The Adaptive Case and the Case of Unknown Measure ρ_X

机译:非参数回归问题中估计量误差的上界:自适应情形和未知测度ρ_X的情形

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摘要

We construct estimators of regression functions and prove theorems on their errors in two different cases. In the first case, we consider the so-called adaptive estimators whose error is close to the optimal one for a whole family of classes of possible regression functions; the adaptivity of the estimators is connected with the fact that they are constructed without any information about the choice of the class. In the second case, the class of possible regression functions is fixed; however, the marginal measure is unknown and the estimator is constructed without any information about this measure. Its error turns out to be close to the minimal possible (in the worst case) error.
机译:我们构造回归函数的估计量,并证明它们在两种不同情况下的误差定理。在第一种情况下,我们考虑了所谓的自适应估计器,其误差接近整个可能回归函数类的最优误差。估计量的适应性与以下事实有关:它们的构造没有关于类别选择的任何信息。在第二种情况下,可能的回归函数的类别是固定的;但是,边际测度是未知的,估计器的构造没有任何有关该测度的信息。事实证明,它的误差接近最小的误差(在最坏的情况下)。

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