Publication: Robust functional linear regression models
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Abstract
With advancements in technology and data storage, the availability of functional data whose
sample observations are recorded over a continuum, such as time, wavelength, space grids, and depth,
progressively increases in almost all scientific branches. The functional linear regression models,
including scalar-on-function and function-on-function, have become popular tools for exploring the
functional relationships between the scalar response-functional predictors and functional responsefunctional predictors, respectively. However, most existing estimation strategies are based on nonrobust estimators that are seriously hindered by outlying observations, which are common in applied
research. In the case of outliers, the non-robust methods lead to undesirable estimation and prediction
results. Using a readily-available R package robflreg, this paper presents several robust methods build
upon the functional principal component analysis for modeling and predicting scalar-on-function and
function-on-function regression models in the presence of outliers. The methods are demonstrated via
simulated and empirical datasets.
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İstatistik, Temel Bilimler, Statistics, Natural Sciences, Temel Bilimler (SCI), Doğa Bilimleri Genel, Psikoloji, ÇOK DİSİPLİNLİ BİLİMLER, PSİKOLOJİ, MATEMATİKSEL, Natural Sciences (SCI), NATURAL SCIENCES, GENERAL, PSYCHOLOGY, MULTIDISCIPLINARY SCIENCES, PSYCHOLOGY, MATHEMATICAL, Multidisipliner, Multidisciplinary
Citation
Beyaztaş U., Shang H. L., "Robust Functional Linear Regression Models", R JOURNAL, cilt.15, sa.1, ss.121-233, 2023
