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PFA-Nipals: An Unsupervised Principal Feature Selection Based on Nonlinear Estimation by Iterative Partial Least Squares

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Listed:
  • Emilio Castillo-Ibarra

    (Engineering Systems Doctoral Program, Faculty of Engineering, Universidad de Talca, Campus Curicó, Curicó 3340000, Chile)

  • Marco A. Alsina

    (Faculty of Engineering, Architecture and Design, Universidad San Sebastian, Bellavista 7, Santiago 8420524, Chile)

  • Cesar A. Astudillo

    (Department of Computer Science, Faculty of Engineering, University of Talca, Campus Curicó, Curicó 3340000, Chile)

  • Ignacio Fuenzalida-Henríquez

    (Building Management and Engineering Department, Faculty of Engineering, University of Talca, Campus Curicó, Curicó 3340000, Chile)

Abstract

Unsupervised feature selection (UFS) has received great interest in various areas of research that require dimensionality reduction, including machine learning, data mining, and statistical analysis. However, UFS algorithms are known to perform poorly on datasets with missing data, exhibiting a significant computational load and learning bias. In this work, we propose a novel and robust UFS method, designated PFA-Nipals, that works with missing data without the need for deletion or imputation. This is achieved by considering an iterative nonlinear estimation of principal components by partial least squares, while the relevant features are selected through minibatch K-means clustering. The proposed method is successfully applied to select the relevant features of a robust health dataset with missing data, outperforming other UFS methods in terms of computational load and learning bias. Furthermore, the proposed method is capable of finding a consistent set of relevant features without biasing the explained variability, even under increasing missing data. Finally, it is expected that the proposed method could be used in several areas, such as machine learning and big data with applications in different areas of the medical and engineering sciences.

Suggested Citation

  • Emilio Castillo-Ibarra & Marco A. Alsina & Cesar A. Astudillo & Ignacio Fuenzalida-Henríquez, 2023. "PFA-Nipals: An Unsupervised Principal Feature Selection Based on Nonlinear Estimation by Iterative Partial Least Squares," Mathematics, MDPI, vol. 11(19), pages 1-25, October.
  • Handle: RePEc:gam:jmathe:v:11:y:2023:i:19:p:4154-:d:1252858
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    References listed on IDEAS

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    1. I. T. Jolliffe, 1972. "Discarding Variables in a Principal Component Analysis. I: Artificial Data," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 21(2), pages 160-173, June.
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