Exponential smoothing methods are one of the classical time series forecasting methods. It is well known that exponential smoothing methods are powerful forecasting methods. In these methods, exponential smoothing parameters are fixed on time, and they should be estimated with efficient optimization algorithms. According to the time series component, a suitable exponential smoothing method should be preferred. The Holt method can produce successful forecasting results for time series that have a trend. In this study, the Holt method is modified by using time-varying smoothing parameters instead of fixed on time. Smoothing parameters are obtained for each observation from first-order autoregressive models. The parameters of the autoregressiv...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
Abstract – Higher accurate forecasting in such fields as sales, shipping is an urgent necessity in i...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...
Publicado em "AIP Conference Proceedings", Vol. 1648Exponential smoothing methods are the most used...
The Holt's linear exponential smoothing method has been frequently used to forecast a time series th...
Abstract: Robust versions of the exponential and Holt-Winters smoothing method for forecasting are p...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt-Winters smoothing method for forecasting are presented. ...
Exponential smoothing models are simple, accurate and robust forecasting models and because of these...
The focus of this paper is on the relationship between the exponential smoothing methods of forecast...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
This study deals with forecasting economic time series that have strong trends and seas...
This thesis is concerned with integrating regressors into the very successful exponential smoothing ...
In practice many data series contain observations at irregular times whereas most forecasting method...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
Abstract – Higher accurate forecasting in such fields as sales, shipping is an urgent necessity in i...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...
Publicado em "AIP Conference Proceedings", Vol. 1648Exponential smoothing methods are the most used...
The Holt's linear exponential smoothing method has been frequently used to forecast a time series th...
Abstract: Robust versions of the exponential and Holt-Winters smoothing method for forecasting are p...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt–Winters smoothing method for forecasting are presented. ...
Robust versions of the exponential and Holt-Winters smoothing method for forecasting are presented. ...
Exponential smoothing models are simple, accurate and robust forecasting models and because of these...
The focus of this paper is on the relationship between the exponential smoothing methods of forecast...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
This study deals with forecasting economic time series that have strong trends and seas...
This thesis is concerned with integrating regressors into the very successful exponential smoothing ...
In practice many data series contain observations at irregular times whereas most forecasting method...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
Abstract – Higher accurate forecasting in such fields as sales, shipping is an urgent necessity in i...
The calculation of interval forecasts for highly persistent autoregressive (AR) time series based on...