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Published in: Journal of Quantitative Economics 3/2022

09-05-2022 | Original Article

Artificial Neural Network for Modeling the Economic Performance: A New Perspective

Author: Ahmed Ramzy Mohamed

Published in: Journal of Quantitative Economics | Issue 3/2022

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Abstract

This paper discusses a new representation for the efficiency frontier method through a proposed algorithm for augmented feed forward back propagation neural network models, in order to estimate the economic performance, and the effectiveness of macroeconomic policies in Egyptian economy, by using a quarter time series data from 1990Q1 to 2019Q2. In this study I developed artificial neural network models—ANN—corresponding with the conditions of the Egyptian economy, by building an optimal efficiency frontier and then comparing the actual performance of the Egyptian economy with that limit, which includes the lowest possible variations for both inflation and output. As for the new contribution of this study, it is designated to calculate the optimal inflation rate and the optimal output level in the Egyptian economy through a model, which combines the higher predictive power of feed forward neural network models and the high explanatory power of a stationary or random walk stochastic models, in order to obtain the fitted values of the optimal output level, in addition to the optimal inflation rate. It is clear from the results of the study, the extent of the essential congruence between the actual Egyptian economic performance during the study period and the economic performance index that was built via the new contribution of this study.

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Appendix
Available only for authorised users
Footnotes
1
The back propagation operations processes take from the principle of learning on which the artificial neural network models is a clear method for them, as it is clear from (Fig. 3) how mean square errors return to the inputs layer from outputs layer to reach these errors to the lowest possible level, each error comes out from the neural network models enters it again until an error is lower than the previous residual was reached to it.
 
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Metadata
Title
Artificial Neural Network for Modeling the Economic Performance: A New Perspective
Author
Ahmed Ramzy Mohamed
Publication date
09-05-2022
Publisher
Springer India
Published in
Journal of Quantitative Economics / Issue 3/2022
Print ISSN: 0971-1554
Electronic ISSN: 2364-1045
DOI
https://doi.org/10.1007/s40953-022-00297-9

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