Inicio  /  Algorithms  /  Vol: 16 Par: 9 (2023)  /  Artículo
ARTÍCULO
TITULO

Nonsmooth Optimization-Based Hyperparameter-Free Neural Networks for Large-Scale Regression

Napsu Karmitsa    
Sona Taheri    
Kaisa Joki    
Pauliina Paasivirta    
Adil M. Bagirov and Marko M. Mäkelä    

Resumen

In this paper, a new nonsmooth optimization-based algorithm for solving large-scale regression problems is introduced. The regression problem is modeled as fully-connected feedforward neural networks with one hidden layer, piecewise linear activation, and the L1" role="presentation">??1L1 L 1 -loss functions. A modified version of the limited memory bundle method is applied to minimize this nonsmooth objective. In addition, a novel constructive approach for automated determination of the proper number of hidden nodes is developed. Finally, large real-world data sets are used to evaluate the proposed algorithm and to compare it with some state-of-the-art neural network algorithms for regression. The results demonstrate the superiority of the proposed algorithm as a predictive tool in most data sets used in numerical experiments.