The aim of this study is to propose a new hybrid feature selection model to improve the performance of multivariate time series (MTS) forecasting under uncertainty situation. This new hybrid model is called cooperative feature selection (CFS) and consists of two different component; GRA Analyzer and ANN Optimizer. The performance of CFS is evaluated on KLSE close price. The statistical analysis of the results shows that CFS has high ability to recognize and remove irrelevant input for obtaining optimum input factors, shortening the learning time and improving forecasting accuracy for vague MTS
Making predictions nowadays is of high importance for any company, whether small or large, as thanks...
A hybrid feature selection (HFS) algorithm to obtain the optimal feature set to attain optimal forec...
Many organizations adopt information technologies to make intelligent decisions during operations. T...
The aim of this paper is to propose a novel approach in hybridizing linear and nonlinear model by in...
International audience—The field of time series forecasting has progressed significantly in recent d...
High prediction accuracies at time series modeling and forecasting is of the utmost importance for a...
International audienceHandling time series forecasting with many predictors is a popular topic in th...
Multivariate time series data classification has recently attracted interests from both industry and...
Use of the proper demand forecasting method and data set is very important for reliable system opera...
Appropriate selection of inputs for time series forecasting models is important because it not only ...
Time series forecasting deals with the prediction of future values of time-dependent quantities (e.g...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
Many organizations adopt information technologies to make intelligent decisions during operations. T...
Time series forecasting has been proved to be relatively easier for stationary time series, compared...
Over the last two decades there has been an increase in the research of artificial neural networks (...
Making predictions nowadays is of high importance for any company, whether small or large, as thanks...
A hybrid feature selection (HFS) algorithm to obtain the optimal feature set to attain optimal forec...
Many organizations adopt information technologies to make intelligent decisions during operations. T...
The aim of this paper is to propose a novel approach in hybridizing linear and nonlinear model by in...
International audience—The field of time series forecasting has progressed significantly in recent d...
High prediction accuracies at time series modeling and forecasting is of the utmost importance for a...
International audienceHandling time series forecasting with many predictors is a popular topic in th...
Multivariate time series data classification has recently attracted interests from both industry and...
Use of the proper demand forecasting method and data set is very important for reliable system opera...
Appropriate selection of inputs for time series forecasting models is important because it not only ...
Time series forecasting deals with the prediction of future values of time-dependent quantities (e.g...
In research of time series forecasting, a lot of uncertainty is still related to the question of wh...
Many organizations adopt information technologies to make intelligent decisions during operations. T...
Time series forecasting has been proved to be relatively easier for stationary time series, compared...
Over the last two decades there has been an increase in the research of artificial neural networks (...
Making predictions nowadays is of high importance for any company, whether small or large, as thanks...
A hybrid feature selection (HFS) algorithm to obtain the optimal feature set to attain optimal forec...
Many organizations adopt information technologies to make intelligent decisions during operations. T...