Publication: On partial least‐squares estimation in scalar‐on‐function regression models
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Abstract
Scalar-on-function regression, where the response is scalar valued and the
predictor consists of random functions, is one of the most important tools for
exploring the functional relationship between a scalar response and functional
predictor(s). The functional partial least-squares method improves estimation
accuracy for estimating the regression coefficient function compared to other
existing methods, such as least squares, maximum likelihood, and maximum
penalized likelihood. The functional partial least-squares method is often
based on the SIMPLS or NIPALS algorithm, but these algorithms can be
computationally slow for analyzing a large dataset. In this study, we propose
two modified functional partial least-squares methods to efficiently estimate
the regression coefficient function under the scalar-on-function regression. In
the proposed methods, the infinite-dimensional functional predictors are first
projected onto a finite-dimensional space using a basis expansion method.
Then, two partial least-squares algorithms, based on re-orthogonalization of
the score and loading vectors, are used to estimate the linear relationship
between scalar response and the basis coefficients of the functional predictors.
The finite-sample performance and computing speed are evaluated using a
series of Monte Carlo simulation studies and a sugar process dataset.
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Keywords
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, Bidiag1, Bidiag2, bidiagonalization, NIPALS, SIMPLS
Citation
Saricam S., Beyaztaş U., Asikgil B., Shang H. L. , "On partial least‐squares estimation in scalar‐on‐function regression models", JOURNAL OF CHEMOMETRICS, ss.1-16, 2022
