2022
DOI: 10.30812/matrik.v22i1.1826
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Optimization of Performance Traditional Back-propagation with Cyclical Rule for Forecasting Model

Anjar Wanto,
Ni Luh Wiwik Sri Rahayu Ginantra,
Surya Hendraputra
et al.

Abstract: The traditional Back-propagation algorithm has several weaknesses, including long training times and significant iterations to achieve convergence. This study aims to optimize traditional Back-propagation using the cyclical rule method to cover these weaknesses. Optimization is done by changing the training function and standard Back-propagation parameters using the training function and cyclical rule parameters. After that, a comparison of the two results will be carried out. This study uses quantitative meth… Show more

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