Nonlinear Theory and Its Applications, IEICE
Online ISSN : 2185-4106
ISSN-L : 2185-4106
Special Section on Nonlinear Science Workshop on the Journal
On the study of the memory-less quasi-Newton method with momentum term for neural network training
Shahrzad MahboubiRyo YamatomiIndrapriyadarsini SHiroshi NinomiyaHideki Asai
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2022 年 13 巻 2 号 p. 271-276

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Quasi-Newton (QN) methods have shown to be effective in training neural networks. However, the computation and the storage of the approximated Hessian in large-scale applications is still a problem. The Memory-less QN (MLQN) was introduced as a method that did not require the storage of the matrix. This paper describes the effectiveness of the momentum term for the accelerated MLQN method through computer simulations on function approximation and classification problems.

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