In this paper, Artificial Neural Networks (ANN) and Regression Analysis models were considered to determine which ofthem performs better. Prediction was done using one hidden layer and three processing elements in the ANN model.Furthermore, prediction was done using regression analysis. The parameters of regression model were estimated using LeastSquare method. To determine the better prediction, mean square errors (MSE) attached to ANN and regression models wereused. Seven real series were fitted and predicted with in both models. It was found out that the mean square error attached toANN model was smaller than regression model which made ANN a better model in prediction.Keywords: Artificial Neural Networks, Regression, Least Square, Proce...
NoThe purpose of this study was to determine whether artificial neural network (ANN) programs implem...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
The information systems (IS) assessment studies have still used the commonly traditional tools such ...
In this paper, Artificial Neural Networks (ANN) and Regression Analysis models were considered to de...
This research work presents new development in the field of natural science, where comparison is mad...
ABSTRACT - Traditional statistical models as tools for summarizing patterns and regularities in obse...
Artificial Neural Networks (ANN) approach is an alternate way to classical methods. As a computation...
Neural networks are being used in areas of prediction and classification, the areas where statistica...
This thesis describes research conducted at City University into the application of Artificial Neura...
In recent years, neural networks are widely being used in areas where conventional statistical metho...
Data Mining accomplishes nontrivial extraction of implicit, previously unknown, and potentially usef...
This paper gives a brief overview of artificial neural networks which may be used to model data simi...
Linear regression and classification techniques are very common in statistical data analysis but the...
Artificial Intelligence, the oldest and best known research area which has the goal of creating inte...
Artificial Neural Networks (ANN) is one of the important statistical methods that are widely used in...
NoThe purpose of this study was to determine whether artificial neural network (ANN) programs implem...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
The information systems (IS) assessment studies have still used the commonly traditional tools such ...
In this paper, Artificial Neural Networks (ANN) and Regression Analysis models were considered to de...
This research work presents new development in the field of natural science, where comparison is mad...
ABSTRACT - Traditional statistical models as tools for summarizing patterns and regularities in obse...
Artificial Neural Networks (ANN) approach is an alternate way to classical methods. As a computation...
Neural networks are being used in areas of prediction and classification, the areas where statistica...
This thesis describes research conducted at City University into the application of Artificial Neura...
In recent years, neural networks are widely being used in areas where conventional statistical metho...
Data Mining accomplishes nontrivial extraction of implicit, previously unknown, and potentially usef...
This paper gives a brief overview of artificial neural networks which may be used to model data simi...
Linear regression and classification techniques are very common in statistical data analysis but the...
Artificial Intelligence, the oldest and best known research area which has the goal of creating inte...
Artificial Neural Networks (ANN) is one of the important statistical methods that are widely used in...
NoThe purpose of this study was to determine whether artificial neural network (ANN) programs implem...
The goal of this paper is to compare and analyze the forecasting performance of two artificial neura...
The information systems (IS) assessment studies have still used the commonly traditional tools such ...