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