The development of data acquisition systems is facilitating the collection of data that are apt to be modelled as functional data. In some applications, the interest lies in the identification of significant differences in group functional means defined by varying experimental conditions, which is known as functional analysis of variance (FANOVA). With real data, it is common that the sample under study is contaminated by some outliers, which can strongly bias the analysis. In this paper, we propose a new robust nonparametric functional ANOVA method (RoFANOVA) that reduces the weights of outlying functional data on the results of the analysis. It is implemented through a permutation test based on a test statistic obtained via a functional extension of the classical robust $ M $-estimator. By means of an extensive Monte Carlo simulation study, the proposed test is compared with some alternatives already presented in the literature, in both one-way and two-way designs. The performance of the RoFANOVA is demonstrated in the framework of a motivating real-case study in the field of additive manufacturing that deals with the analysis of spatter ejections. The RoFANOVA method is implemented in the R package rofanova, available online at https://github.com/unina-sfere/rofanova.
翻译:数据采集系统的发展有助于收集数据,而这些数据的模型是功能性数据。在一些应用中,人们的兴趣在于查明不同实验条件(称为差异的功能分析(FANOVA))所定义的团体功能手段的重大差异,这种实验条件被称为对差异的功能分析(FANOVA)。根据真实数据,研究的样本通常受到某些外星体的污染,这种外星体可能对分析产生很大的偏差。在本文件中,我们提出了一种新的强健的、非参数性功能性ANOVA方法(ROFANOVA),该方法降低了分析结果的外部功能数据重量。它通过基于古典强力M $ - 估量的功能扩展获得的测试统计数据进行的调整测试测试测试来实施。通过广泛的蒙特卡洛模拟研究,将拟议的测试与文献中已经介绍的一些替代物进行比较。在单向和双向设计中,该方法的性能表现表现表现表现表现在用于分析喷射弹喷射弹的添加剂制造领域进行鼓励性实际研究的框架中。RoFANOVA方法在Rpas-ubs/uffarvas/ Amovarvas。在网上可得到的Rpas/ https. https. AMgistrubs.