LGNEJan 31, 2025

SAGRAD: A Program for Neural Network Training with Simulated Annealing and the Conjugate Gradient Method

arXiv:2502.00112v16 citationsh-index: 20J Res National Inst Stand Technol
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for researchers in neural network optimization, focusing on classification tasks.

The paper tackles neural network training by combining simulated annealing and a scaled conjugate gradient method to avoid local minima, achieving improved convergence on two example datasets.

SAGRAD (Simulated Annealing GRADient), a Fortran 77 program for computing neural networks for classification using batch learning, is discussed. Neural network training in SAGRAD is based on a combination of simulated annealing and Møller's scaled conjugate gradient algorithm, the latter a variation of the traditional conjugate gradient method, better suited for the nonquadratic nature of neural networks. Different aspects of the implementation of the training process in SAGRAD are discussed, such as the efficient computation of gradients and multiplication of vectors by Hessian matrices that are required by Møller's algorithm; the (re)initialization of weights with simulated annealing required to (re)start Møller's algorithm the first time and each time thereafter that it shows insufficient progress in reaching a possibly local minimum; and the use of simulated annealing when Møller's algorithm, after possibly making considerable progress, becomes stuck at a local minimum or flat area of weight space. Outlines of the scaled conjugate gradient algorithm, the simulated annealing procedure and the training process used in SAGRAD are presented together with results from running SAGRAD on two examples of training data.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes