In this paper, we propose an adaptive smoothing spline (AdaSS) estimator for the function-on-function linear regression model where each value of the response, at any domain point, depends on the full trajectory of the predictor. The AdaSS estimator is obtained by the optimization of an objective function with two spatially adaptive penalties, based on initial estimates of the partial derivatives of the regression coefficient function. This allows the proposed estimator to adapt more easily to the true coefficient function over regions of large curvature and not to be undersmoothed over the remaining part of the domain. A novel evolutionary algorithm is developed ad hoc to obtain the optimization tuning parameters. Extensive Monte Carlo simulations have been carried out to compare the AdaSS estimator with competitors that have already appeared in the literature before. The results show that our proposal mostly outperforms the competitor in terms of estimation and prediction accuracy. Lastly, those advantages are illustrated also on two real-data benchmark examples.
翻译:在本文中,我们为功能对功能的线性回归模型提出了一个适应性平滑样条(AdaSS)估计符,在任何域点,反应的每个值都取决于预测器的完整轨迹。AdaSS估计符是通过优化一个客观函数获得的,有两个空间适应性处罚,其依据是对回归系数函数部分衍生物的初步估计。这样,拟议的估计符就可以更容易地适应大弯曲区域的真实系数函数,而不是对域余下部分进行渗透。一个新的进化算法是临时开发的,以获得优化调制参数。已经进行了广泛的蒙特卡洛模拟,以便将AdaSS估计符与以前在文献中已经出现的竞争者进行比较。结果显示,我们的提议在估计和预测准确性方面大多超过竞争者。最后,这些优点还体现在两个真实数据基准示例上。