In this paper, a functional partial quantile regression approach, a quantile regression analog of the functional partial least squares regression, is proposed to estimate the function-on-function linear quantile regression model. A partial quantile covariance function is first used to extract the functional partial quantile regression basis functions. The extracted basis functions are then used to obtain the functional partial quantile regression components and estimate the final model. In our proposal, the functional forms of the discretely observed random variables are first constructed via a finite-dimensional basis function expansion method. The functional partial quantile regression constructed using the functional random variables is approximated via the partial quantile regression constructed using the basis expansion coefficients. The proposed method uses an iterative procedure to extract the partial quantile regression components. A Bayesian information criterion is used to determine the optimum number of retained components. The proposed functional partial quantile regression model allows for more than one functional predictor in the model. However, the true form of the proposed model is unspecified, as the relevant predictors for the model are unknown in practice. Thus, a forward variable selection procedure is used to determine the significant predictors for the proposed model. Moreover, a case-sampling-based bootstrap procedure is used to construct pointwise prediction intervals for the functional response. The predictive performance of the proposed method is evaluated using several Monte Carlo experiments under different data generation processes and error distributions. Through an empirical data example, air quality data are analyzed to demonstrate the effectiveness of the proposed method.
翻译:在本文中,一个功能性部分定量回归法,即功能性部分最小正方回归法的四分位回归模拟法,建议用来估计功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在最小微微微的回归模型中,估计功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在功能-在最小微线性线性线性-微微微回归模型中,在计算功能-在功能-部分回归回归回归模型中,将功能-在功能-部分回归回归法中,将使用迭接程序来提取部分微量微微微微的回归法部分回归法。在模型中,将一些拟议功能-部分回归模型的真实形式未说明,因为模型的相关预测器在实践中并不为人所了解。因此,一个可变的参数选择-选择程序将用来确定功能-在功能-在轨-在模型中,在计算中,在计算中,在计算中,在计算中,一个拟议-在计算方法下,在计算方法下,在构建一个拟议-在计算中,在计算中,在构建一个功能-在计算方法下,在构建一个功能-在计算性-在计算中,在计算方法下,将使用一个基于-在计算中,将一个功能-在计算。