Econometric and predictive modeling techniques are two popular forecasting techniques. Both ofthese techniques have their own advantages and disadvantages. In this thesis some econometricmodels are considered and compared to predictive models using sales data for five products fromICA a Swedish retail wholesaler. The econometric models considered are regression model,exponential smoothing, and ARIMA model. The predictive models considered are artificialneural network (ANN) and ensemble of neural networks. Evaluation metrics used for thecomparison are: MAPE, WMAPE, MAE, RMSE, and linear correlation. The result of this thesisshows that artificial neural network is more accurate in forecasting sales of product. But it doesnot differ too much f...
This paper is motivated by the difficulties faced by forecasters in predicting the decline in the gr...
Neural networks are a computing paradigm developed from artificial intelligence and brain modelling’...
The modelling technique known as Artificial Neural Networks (ANNs) is investigated. ANNs have the ab...
The objective of this paper is to carry out the comparison and selection of a method to forecast sal...
Demand forecasting is a crucial part of managing any supply chain network, since inaccurate forecast...
The objective of this paper is to compare different forecasting methods for the short run forecastin...
This paper presents an empirical exercise in economic forecast using traditional time series methods...
In this study the prediction capabilities of Artificial Neural Networks and typical econometric meth...
This study compares the performance of artificial neural networks and multiple linear regression as ...
Artificial neural networks are now being extensively used in the area of marketing analysis as they ...
This paper presents an empirical exercise in economic lorecast using traditional time series methods...
Forecasting accuracy drives the performance of inventory management. This study is to investigate an...
Having an accurate forecast of the upcoming demand is of utmost importance to a retail company, as i...
Magistro baigiamojo darbo tikslas yra išsiaiškinti ar tiesinių ir netiesinių prognozavimo modelių ko...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
This paper is motivated by the difficulties faced by forecasters in predicting the decline in the gr...
Neural networks are a computing paradigm developed from artificial intelligence and brain modelling’...
The modelling technique known as Artificial Neural Networks (ANNs) is investigated. ANNs have the ab...
The objective of this paper is to carry out the comparison and selection of a method to forecast sal...
Demand forecasting is a crucial part of managing any supply chain network, since inaccurate forecast...
The objective of this paper is to compare different forecasting methods for the short run forecastin...
This paper presents an empirical exercise in economic forecast using traditional time series methods...
In this study the prediction capabilities of Artificial Neural Networks and typical econometric meth...
This study compares the performance of artificial neural networks and multiple linear regression as ...
Artificial neural networks are now being extensively used in the area of marketing analysis as they ...
This paper presents an empirical exercise in economic lorecast using traditional time series methods...
Forecasting accuracy drives the performance of inventory management. This study is to investigate an...
Having an accurate forecast of the upcoming demand is of utmost importance to a retail company, as i...
Magistro baigiamojo darbo tikslas yra išsiaiškinti ar tiesinių ir netiesinių prognozavimo modelių ko...
This study shows that neural networks have been advocated as an alternative to traditional statistic...
This paper is motivated by the difficulties faced by forecasters in predicting the decline in the gr...
Neural networks are a computing paradigm developed from artificial intelligence and brain modelling’...
The modelling technique known as Artificial Neural Networks (ANNs) is investigated. ANNs have the ab...