A robust scalar-on-function logistic regression for classification
Abstract
Scalar-on-function logistic regression, where the response is a binary outcome and the predictor consists of random curves, has become a general framework to explore a linear relationship between the binary outcome and functional predictor. Most of the methods used to estimate this model are based on the least-squares type estimators. However, the least-squares estimator is seriously hindered by outliers, leading to biased parameter estimates and an increased probability of misclassification. This paper proposes a robust partial least squares method to estimate the regression coefficient function in the scalar-on-function logistic regression. The regression coefficient function represented by functional partial least squares decomposition is estimated by a weighted likelihood method, which downweighs the effect of outliers in the response and predictor. The estimation and classification performance of the proposed method is evaluated via a series of Monte Carlo experiments and a strawberry puree data set. The results obtained from the proposed method are compared favorably with existing methods.
Cite
@article{arxiv.2204.02508,
title = {A robust scalar-on-function logistic regression for classification},
author = {Muge Mutis and Ufuk Beyaztas and Gulhayat Golbasi Simsek and Han Lin Shang},
journal= {arXiv preprint arXiv:2204.02508},
year = {2022}
}
Comments
23 pages, 8 figures, to appear at the Communications in Statistics - Theory and Methods