Novel sparse PCA method via Runge Kutta numerical method(s) for face recognition
Journal:
arXiv
Published Date:
Mar 30, 2025
Abstract
Face recognition is a crucial topic in data science and biometric security,
with applications spanning military, finance, and retail industries. This paper
explores the implementation of sparse Principal Component Analysis (PCA) using
the Proximal Gradient method (also known as ISTA) and the Runge-Kutta numerical
methods. To address the face recognition problem, we integrate sparse PCA with
either the k-nearest neighbor method or the kernel ridge regression method.
Experimental results demonstrate that combining sparse PCA-solved via the
Proximal Gradient method or the Runge-Kutta numerical approach-with a
classification system yields higher accuracy compared to standard PCA.
Additionally, we observe that the Runge-Kutta-based sparse PCA computation
consistently outperforms the Proximal Gradient method in terms of speed.