Rank estimation for the functional linear model |
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Authors: | Melody Denhere Huybrechts F. Bindele |
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Affiliation: | 1. Department of Mathematics, University of Mary Washington, Fredericksburg, VA, USA;2. Department of Math and Stats, University of South Alabama, Mobile, AL, USA |
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Abstract: | This article discusses the estimation of the parameter function for a functional linear regression model under heavy-tailed errors' distributions and in the presence of outliers. Standard approaches of reducing the high dimensionality, which is inherent in functional data, are considered. After reducing the functional model to a standard multiple linear regression model, a weighted rank-based procedure is carried out to estimate the regression parameters. A Monte Carlo simulation and a real-world example are used to show the performance of the proposed estimator and a comparison made with the least-squares and least absolute deviation estimators. |
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Keywords: | Functional linear regression robust methods functional data outliers rank estimation |
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