Optimization Algorithms in Deep Learning Models for Improving the Forecasting Accuracy in Sequential Datasets with Application in the South African Stock Market Index: A Review

Authors

  • Sanele Makamo1* 1Benguela Global Fund Managers, Johannesburg, 2191, South Africa.

DOI:

https://doi.org/10.51483/IJAIML.4.2.2024.01-08

Keywords:

Machine learning, Deep learning, Neural networks, Optimization algorithms, Loss function

Abstract

In this paper we review different popular optimization algorithms for machine
learning models, we then evaluate the model performance and convergence
rates for each optimizer using a multilayer fully connected neural networks.
Using sequential dataset of index returns (time-series data) spanning over of 20-
years, we demonstrate Adam and RMSprop optimizers can efficiently solve
practical deep learning problems dealing with sequential datasets. We use the
same parameter initialization when comparing different optimization
algorithms. The hyper-parameters, such as learning rate and momentum, are
searched over a dense grid and the results are reported using the best hyperparameter
setting.

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Published

2024-07-05

How to Cite

Sanele Makamo1*. (2024). Optimization Algorithms in Deep Learning Models for Improving the Forecasting Accuracy in Sequential Datasets with Application in the South African Stock Market Index: A Review. International Journal of Artificial Intelligence and Machine Learning, 4(02), 01–08. https://doi.org/10.51483/IJAIML.4.2.2024.01-08

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