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A robust scalar-on-function logistic regression for classification

Author

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  • Muge Mutis
  • Ufuk Beyaztas
  • Gulhayat Golbasi Simsek
  • Han Lin Shang

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.

Suggested Citation

  • Muge Mutis & Ufuk Beyaztas & Gulhayat Golbasi Simsek & Han Lin Shang, 2023. "A robust scalar-on-function logistic regression for classification," Communications in Statistics - Theory and Methods, Taylor & Francis Journals, vol. 52(23), pages 8538-8554, December.
  • Handle: RePEc:taf:lstaxx:v:52:y:2023:i:23:p:8538-8554
    DOI: 10.1080/03610926.2022.2065018
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