This study proposes a new time series forecasting method that employs possibilistic fuzzy c-means, an autoregressive moving average model (ARMA), and a grey wolf optimizer (GWO) in type-1 fuzzy functions. Type-1 fuzzy functions (T1FFs) were used to forecast functions using an autoregressive model. However, rather than relying solely on past values of the forecast variable in a regression, the inclusion of past forecast errors improves forecasting ability. In this sense, the moving average model also employed in the proposed method. The inputs therefore are a combination of the past values of the time series and the past errors. The main idea of T1FFs is to include a new variable (or variables) that provides more information about the time s...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Linear time series methods are researched under 3 topics, namely, AR (autoregressive), MA (moving a...
In this paper, we have presented a new particle swarm optimization based multivariate fuzzy time ser...
In this study, a novel forecasting method that employs intuitionistic fuzzy c-means clustering and a...
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...
There are many methods to obtain accurate forecasts for time series data in the literature. It is im...
Type-1 Fuzzy Functions (T1FFs) were developed by Turksen as an alternative fuzzy inference system (F...
In the literature, fuzzy time series forecasting models generally include fuzzy lagged variables. Th...
In the literature, fuzzy time series forecasting models generally include fuzzy lagged variables. Th...
Time series models are used extensively in many fields, such as medicine, engineering, business, eco...
As it known in many studies, the fuzzy time series methods do not need assumptions such as stationar...
In this study, a fuzzy integrated logical forecasting method (FILF) is extended for multi-variate sy...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Forecasting activities play an important role in our daily life. In recent years, fuzzy time series ...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Linear time series methods are researched under 3 topics, namely, AR (autoregressive), MA (moving a...
In this paper, we have presented a new particle swarm optimization based multivariate fuzzy time ser...
In this study, a novel forecasting method that employs intuitionistic fuzzy c-means clustering and a...
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...
There are many methods to obtain accurate forecasts for time series data in the literature. It is im...
Type-1 Fuzzy Functions (T1FFs) were developed by Turksen as an alternative fuzzy inference system (F...
In the literature, fuzzy time series forecasting models generally include fuzzy lagged variables. Th...
In the literature, fuzzy time series forecasting models generally include fuzzy lagged variables. Th...
Time series models are used extensively in many fields, such as medicine, engineering, business, eco...
As it known in many studies, the fuzzy time series methods do not need assumptions such as stationar...
In this study, a fuzzy integrated logical forecasting method (FILF) is extended for multi-variate sy...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Forecasting activities play an important role in our daily life. In recent years, fuzzy time series ...
In this study, a new hybrid forecasting method is proposed. The proposed method is called autoregres...
Linear time series methods are researched under 3 topics, namely, AR (autoregressive), MA (moving a...
In this paper, we have presented a new particle swarm optimization based multivariate fuzzy time ser...