A comparison of testing methods in scalar-on-function regression

被引:0
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作者
Merve Yasemin Tekbudak
Marcela Alfaro-Córdoba
Arnab Maity
Ana-Maria Staicu
机构
[1] North Carolina State University,Department of Statistics
[2] North Carolina State University,Department of Statistics
[3] Universidad de Costa Rica,Escuela de Estadística
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关键词
Functional regression; Functional linear model; Nonparametric regression; Mixed-effects model; Hypothesis testing;
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学科分类号
摘要
A scalar-response functional model describes the association between a scalar response and a set of functional covariates. An important problem in the functional data literature is to test nullity or linearity of the effect of the functional covariate in the context of scalar-on-function regression. This article provides an overview of the existing methods for testing both the null hypotheses that there is no relationship and that there is a linear relationship between the functional covariate and scalar response, and a comprehensive numerical comparison of their performance. The methods are compared for a variety of realistic scenarios: when the functional covariate is observed at dense or sparse grids and measurements include noise or not. Finally, the methods are illustrated on the Tecator data set.
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页码:411 / 436
页数:25
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