Randomized based restricted kernel machine for hyperspectral image classification
Journal:
arXiv
Published Date:
Mar 6, 2025
Abstract
In recent years, the random vector functional link (RVFL) network has gained
significant popularity in hyperspectral image (HSI) classification due to its
simplicity, speed, and strong generalization performance. However, despite
these advantages, RVFL models face several limitations, particularly in
handling non-linear relationships and complex data structures. The random
initialization of input-to-hidden weights can lead to instability, and the
model struggles with determining the optimal number of hidden nodes, affecting
its performance on more challenging datasets. To address these issues, we
propose a novel randomized based restricted kernel machine ($R^2KM$) model that
combines the strehyperngths of RVFL and restricted kernel machines (RKM).
$R^2KM$ introduces a layered structure that represents kernel methods using
both visible and hidden variables, analogous to the energy function in
restricted Boltzmann machines (RBM). This structure enables $R^2KM$ to capture
complex data interactions and non-linear relationships more effectively,
improving both interpretability and model robustness. A key contribution of
$R^2KM$ is the introduction of a novel conjugate feature duality based on the
Fenchel-Young inequality, which expresses the problem in terms of conjugate
dual variables and provides an upper bound on the objective function. This
duality enhances the model's flexibility and scalability, offering a more
efficient and flexible solution for complex data analysis tasks. Extensive
experiments on hyperspectral image datasets and real-world data from the UCI
and KEEL repositories show that $R^2KM$ outperforms baseline models,
demonstrating its effectiveness in classification and regression tasks.