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Error variance estimation in semi-functional partially linear regression models

机译:半功能部分线性回归模型中的误差方差估计

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This paper focuses on partially linear regression models with several real and functional covariates. The aim is to construct an estimate of the variance of the error. In our model, a real-valued response variable is explained by the sum of an unknown linear combination of the components of a multivariate random variable and an unknown transformation of a functional random variable, and the second sample moment based on residuals from a semiparametric fit is proposed for estimating the error variance. Then, the asymptotic normality and the law of the iterated logarithm of such estimator are obtained. Finally, a simulation study illustrates the finite sample behaviour of the estimator, while an application to real data shows the usefulness of the proposed methodology, more specifically for confidence region construction.
机译:本文着重于部分线性回归模型,其中包含几个实数和函数协变量。目的是构建误差方差的估计。在我们的模型中,实数响应变量由多元随机变量和函数随机变量的未知变换组成的未知线性组合之和和基于半参数拟合残差的第二个样本矩的总和来解释。提出了用于估计误差方差的方法。然后,获得了这种估计量的渐近正态性和迭代对数律。最后,仿真研究说明了估计量的有限样本行为,而对实际数据的应用则表明了所提出方法的有用性,尤其是对于置信区域的构建。

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