Motivated by the pressing request of methods able to create prediction sets in a general regression framework for a multivariate functional response and pushed by new methodological advancements in non-parametric prediction for functional data, we propose a set of conformal predictors that produce finite-sample either valid or exact multivariate simultaneous prediction bands under the mild assumption of exchangeable regression pairs. The fact that the prediction bands can be built around any regression estimator and that can be easily found in closed form yields a very widely usable method, which is fairly straightforward to implement. In addition, we first introduce and then describe a specific conformal predictor that guarantees an asymptotic result in terms of efficiency and inducing prediction bands able to modulate their width based on the local behavior and magnitude of the functional data. The method is investigated and analyzed through a simulation study and a real-world application in the field of urban mobility.
翻译:由于迫切需要一些方法,以便能够在多变量功能反应总回归框架中建立预测数据集,并受到功能数据非参数预测方面新的方法进展的推动,因此,我们提出一套符合的预测数据,根据可互换回归对数的轻度假设,产生有限样本或有效或精确的多变量同步预测波段;预测波段可以围绕任何回归估计值建立,并且可以很容易地以封闭形式找到,这一事实产生了一种非常广泛使用的方法,可以相当直接地加以实施。此外,我们首先采用,然后描述一种特定的符合预测数据,保证在效率和引导预测波段能够根据功能数据的当地行为和规模调整其宽度方面,通过模拟研究和城市流动性领域的现实世界应用来研究和分析这一方法。