To forecast the non-stationary data is quite difficult when compared with the stationary data time series. Because their variances are not constant and not stable like the second data type. This paper presents the implementation of fuzzy time series (FTS) into the non-stationary time series data forecasting, such as, the electricity load demand, the exchange rates, the enrollment university and others. These data forecasts are derived by implementing of the weightage and linguistic out-sample methods. The result shows that the FTS can be applied in improving the accuracy and efficiency of these non-stationary data forecasting opportunities
Abstract—A drawback of traditional forecasting methods is that they can not deal with forecasting pr...
The one central problem in global forecasting area is to minimize the forecasting error and to have ...
A fuzzy time series has been applied to the prediction of enrollment, temperature, stock indices, an...
To forecast the non-stationary data is quite di±cult when compared with the stationary data time se...
In the last 15 years, a number of methods have been proposed for forecasting based on fuzzy time ser...
In electrical power management, load forecasting accuracy is an indispensable factor which influence...
For time series forecasting four kinds of fuzzy-based approaches can be used. These are fuzzy regres...
[[abstract]]Traditional time series methods fail to forecast the problems with linguistic historical...
A Moving holiday is a non-fixed holiday according to the Gregorian calendar. Most of the electricity...
This paper proposes a novel improvement of forecasting approach based on using time-invariant fuzzy ...
Many forecasting models based on the concepts of fuzzy time series have been proposed in the past de...
Non-probabilistic forecasting methods are commonly used in various scientific fields. Fuzzy-time-ser...
Forecasting the future values of a time series is a common research topic and is studied using proba...
Forecasting the future values of a time series is a common research topic and is studied using proba...
The Time-Series models have been used to make predictions in whether forecasting, academic enrollmen...
Abstract—A drawback of traditional forecasting methods is that they can not deal with forecasting pr...
The one central problem in global forecasting area is to minimize the forecasting error and to have ...
A fuzzy time series has been applied to the prediction of enrollment, temperature, stock indices, an...
To forecast the non-stationary data is quite di±cult when compared with the stationary data time se...
In the last 15 years, a number of methods have been proposed for forecasting based on fuzzy time ser...
In electrical power management, load forecasting accuracy is an indispensable factor which influence...
For time series forecasting four kinds of fuzzy-based approaches can be used. These are fuzzy regres...
[[abstract]]Traditional time series methods fail to forecast the problems with linguistic historical...
A Moving holiday is a non-fixed holiday according to the Gregorian calendar. Most of the electricity...
This paper proposes a novel improvement of forecasting approach based on using time-invariant fuzzy ...
Many forecasting models based on the concepts of fuzzy time series have been proposed in the past de...
Non-probabilistic forecasting methods are commonly used in various scientific fields. Fuzzy-time-ser...
Forecasting the future values of a time series is a common research topic and is studied using proba...
Forecasting the future values of a time series is a common research topic and is studied using proba...
The Time-Series models have been used to make predictions in whether forecasting, academic enrollmen...
Abstract—A drawback of traditional forecasting methods is that they can not deal with forecasting pr...
The one central problem in global forecasting area is to minimize the forecasting error and to have ...
A fuzzy time series has been applied to the prediction of enrollment, temperature, stock indices, an...