forecasting gdp growth using ann model with genetic algorithm
Authors
abstract
applying nonlinear models to estimation and forecasting economic models are now becoming more common, thanks to advances in computing technology. artificial neural networks (ann) models, which are nonlinear local optimizer models, have proven successful in forecasting economic variables. most ann models applied in economics use the gradient descent method as their learning algorithm. however, the performance of the ann models can still be improved by using more flexible and general learning algorithm. in this paper, we develop an ann model combined with genetic algorithm to forecast the iranian gop growth. in order to evaluate the performance of the model with other ann and traditional econometric models, we compare the results of the model with other linear and nonlinear competing models such as arma, var, and ann with gradient descent learning algorithm. we use the recently produced extended data on the iranian gop from 1937 to 2002. the results indicate that the ga can improve the forecasting performance of ann model over other standard ann and econometrics models.
similar resources
Forecasting GDP Growth Using ANN Model with Genetic Algorithm
Applying nonlinear models to estimation and forecasting economic models are now becoming more common, thanks to advances in computing technology. Artificial Neural Networks (ANN) models, which are nonlinear local optimizer models, have proven successful in forecasting economic variables. Most ANN models applied in Economics use the gradient descent method as their learning algorithm. However, t...
full textGenetic Algorithm Neural Network Model vs Backpropagation Neural Network Model for GDP Forecasting
This paper evaluates the usefulness of neural networks in GDP forecasting. It is focused on comparing a neural network model trained with genetic algorithm (GANN) to a backpropagation neural network model, both used to forecast the GDP of Albania. Its forecasting is of particular importance in decision-making issues in the field of economy. The conclusion is that the GANN model achieves higher ...
full textinflow simulation and forecasting optimization using hybrid ann-ga algorithm
abstract one of the major factors on the amount of water resources is river flow which is so dependent to the hydrologic and meteorologic phenomena. simulation and forecasting of river flow makes the decision maker capable to effectively manage the water resources projects. so, simulation and forecasting models such as artificial neural networks (anns) are commonly used for simulation and predi...
full textUsing artificial neural network trained with genetic algorithm to model GDP prediction
Using the Gross Domestic Product (GDP)as a measurement of aggregate economic activity is typical. Its cycles are used as an indicator of boom or recession in the economy. Economists and business people are interested in describing and predicting future values of such indicators.However, due to its intrinsic difficulty and non-linear characters, along with many unknown and random events, it is n...
full textA flood forecasting neural network model with genetic algorithm
It will be useful to attain a quick and accurate flood forecasting, particularly in a flood-prone region. The accomplishment of this objective can have far reaching significance by extending the lead time for issuing disaster warnings and furnishing ample time for citizens in vulnerable areas to take appropriate action, such as evacuation. In this paper, a novel hybrid model based on recent art...
full textForecasting Electrical Load using ANN Combined with Multiple Regression Method
This paper combined artificial neural network and regression modeling methods to predict electrical load. We propose an approach for specific day, week and/or month load forecasting for electrical companies taking into account the historical load. Therefore, a modified technique, based on artificial neural network (ANN) combined with linear regression, is applied on the KSA electrical network d...
full textMy Resources
Save resource for easier access later
Journal title:
iranian economic reviewجلد ۹، شماره ۱۱، صفحات ۶۷-۸۴
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023