The function-on-function linear regression model in which the response and predictors consist of random curves has become a general framework to investigate the relationship between the functional response and functional predictors. Existing methods to estimate the model parameters may be sensitive to outlying observations, common in empirical applications. In addition, these methods may be severely affected by such observations, leading to undesirable estimation and prediction results. A robust estimation method, based on iteratively reweighted simple partial least squares, is introduced to improve the prediction accuracy of the function-on-function linear regression model in the presence of outliers. The performance of the proposed method is based on the number of partial least squares components used to estimate the function-on-function linear regression model. Thus, the optimum number of components is determined via a data-driven error criterion. The finite-sample performance of the proposed method is investigated via several Monte Carlo experiments and an empirical data analysis. In addition, a nonparametric bootstrap method is applied to construct pointwise prediction intervals for the response function. The results are compared with some of the existing methods to illustrate the improvement potentially gained by the proposed method.
翻译:功能上线性回归模型,在这种模型中,反应和预测由随机曲线组成,已成为调查功能反应和功能预测器之间关系的一般框架; 现有模型参数估计方法可能敏感于外向观测,这是经验性应用中常见的; 此外,这些方法可能受到这种观测的严重影响,导致不适当的估计和预测结果; 采用基于迭代再加权简单局部最小平方的稳健估算方法,以提高功能上功能线性回归模型在外部线的预测准确性; 拟议方法的性能以用于估计功能上函数上线性回归模型的最小方块数为基础; 因此,通过数据驱动误差标准确定元件的最佳数量; 通过若干蒙特卡洛实验和实验性数据分析对拟议方法的有限性能进行调查; 此外,采用非对称式靴式采集方法,以构建响应功能的点性预测间隔; 将结果与现有的一些方法进行比较,以说明拟议方法可能取得的改进。