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Weak consistency of the Support Vector Machine Quantile Regression approach when covariates are functions

机译:当协变量为函数时,支持向量机分位数回归方法的一致性较弱

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This paper deals with a nonparametric estimation of conditional quantile regression when the explanatory variable X takes its values in a bounded subspace of a functional space X and the response Y takes its values in a compact of the space Y R. The functional observations, X1,...,Xn, are projected onto a finite dimensional subspace having a suitable orthonormal system. The Xi's will be characterized by their coordinates in this basis. We perform the Support Vector Machine Quantile Regression approach in finite dimension with the selected coefficients. Then we establish weak consistency of this estimator. The various parameters needed for the construction of this estimator are automatically selected by data-splitting and by penalized empirical risk minimization.
机译:当解释变量X在函数空间X的有界子空间中采用其值而响应Y在函数Y R的紧致中采用其值时,本文涉及条件分位数回归的非参数估计。 …,Xn被投影到具有合适正交系统的有限维子空间上。 Xi将在此基础上以其坐标为特征。我们使用选定的系数在有限维中执行支持向量机分位数回归方法。然后我们建立了该估计量的弱一致性。通过数据拆分和惩罚性的经验风险最小化,可以自动选择构造此估算器所需的各种参数。

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