Neural network and least square estimator

Main Article Content

Ghania Idiou
Houda Bourezaz
Ilhem Laroussi

Abstract

We propose an alternative and a methodology that joins the expressive power of neural networks with the robustness of least squares estimation to address regression problems involving a twice-censored setting. Within the context of modern statistical learning, this approach is particularly well suited for capturing complex and non-linear relationships. We establish mean squared error norm convergence of the proposed estimator and present a comparative simulation study demonstrating its superior performance over standard neural network methods.

Article Details

Section

Articles

Author Biography

Ghania Idiou, Department of Mathematics, Mentouri Brothers University of Constantine 1, Algeria

Department of Mathematics

How to Cite

Neural network and least square estimator. (2025). Gulf Journal of Mathematics, 20(2), 147-161. https://doi.org/10.56947/gjom.v20i2.3255