657-666Many practical time series often exhibit trends and seasonal patterns. The traditional statistical models eliminate the effect of seasonality from a time series before making future forecasts. As a result, the computational complexities are increased together with substantial reductions in overall forecasting accuracies. This paper comprehensively explores the outstanding ability of Artificial Neural Networks (ANNs) in recognizing and forecasting strong seasonal patterns without removing them from the raw data. Six real-world time series having dominant seasonal fluctuations are used in our work. The performances of the fitted ANN for each of these time series are compared with those of three traditional models both manually...
There is decades long research interest in artificial neural networks (ANNs) that has led to several...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Recently, novel learning algorithms such as Support Vector Regression (SVR) and Neural Networks (NN)...
In this study, an artificial neural network (ANN) structure is proposed for seasonal time series for...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
Forecasting is one of the most challenging fields in the industrial research, due to its importance ...
Over the last two decades there has been an increase in the research of artificial neural networks (...
Over the last two decades there has been an increase in the research of artificial neural networks (...
Research in forecasting with Neural Networks (NN) has provided contradictory evidence on their abili...
AbstractWeather forecasting has become an important field of research in the last few decades. In mo...
Time series often exhibit periodical patterns that can be analysed by conventional statistical techn...
Aladag, Cagdas Hakan/0000-0002-3953-7601; Egrioglu, Erol/0000-0003-4301-4149WOS: 000319016400002In r...
本論文主要研究以類神經網路模式預測季節性時間序列之有效性。利用適當地建構樣本訓練集,網路經訓練後可作為季節性時間序列之預測工具。文中亦提出移動學習法以期提高預測之準確度。並以台灣地區每季進口商品與勞務...
This paper addresses the concerns of Faraway and Chatfield (1998) who questioned the forecasting abi...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
There is decades long research interest in artificial neural networks (ANNs) that has led to several...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Recently, novel learning algorithms such as Support Vector Regression (SVR) and Neural Networks (NN)...
In this study, an artificial neural network (ANN) structure is proposed for seasonal time series for...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
Forecasting is one of the most challenging fields in the industrial research, due to its importance ...
Over the last two decades there has been an increase in the research of artificial neural networks (...
Over the last two decades there has been an increase in the research of artificial neural networks (...
Research in forecasting with Neural Networks (NN) has provided contradictory evidence on their abili...
AbstractWeather forecasting has become an important field of research in the last few decades. In mo...
Time series often exhibit periodical patterns that can be analysed by conventional statistical techn...
Aladag, Cagdas Hakan/0000-0002-3953-7601; Egrioglu, Erol/0000-0003-4301-4149WOS: 000319016400002In r...
本論文主要研究以類神經網路模式預測季節性時間序列之有效性。利用適當地建構樣本訓練集,網路經訓練後可作為季節性時間序列之預測工具。文中亦提出移動學習法以期提高預測之準確度。並以台灣地區每季進口商品與勞務...
This paper addresses the concerns of Faraway and Chatfield (1998) who questioned the forecasting abi...
This study aims to determine an automatic forecasting method of univariate time series, using the no...
There is decades long research interest in artificial neural networks (ANNs) that has led to several...
The main objective of this paper is two folds. First is to assess some well-known linear and nonline...
Recently, novel learning algorithms such as Support Vector Regression (SVR) and Neural Networks (NN)...