In the exponential smoothing approach to forecasting, restrictions are often imposed on the smoothing parameters which ensure that certain components are exponentially weighted averages. In this paper, a new general restriction is derived on the basis that the one-step ahead prediction error can be decomposed into permanent and transient components. It is found that this general restriction reduces to the common restrictions used for simple, trend and seasonal exponential smoothing. As such, the prediction error argument provides the rationale for these restrictions
Forecasting using time series (TS) models are often based on linear regression or methods using vari...
The Holt's linear exponential smoothing method has been frequently used to forecast a time series th...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
Three general classes of state space models are presented, using the single source of error formulat...
It is established in this paper that exponential smoothing, in its most general linear form, is an o...
This paper examines exponential smoothing constants that minimize summary error measures associated ...
An approach to exponential smoothing that relies on a linear single source of error state space mode...
The characteristics of seasonally adjusted, exponentially smoothed forecasts are studied through the...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
In this work the several exponential smoothing type methods are briefly described, which are often u...
In this work the several exponential smoothing type methods are briefly described, which are often u...
The focus of this paper is on the relationship between the exponential smoothing methods of forecast...
The main objective of this paper is to provide analytical expressions for forecast variances that ca...
In this paper we apply the strategy of trend-damping to the popular Winters exponential smoothing sy...
This thesis is concerned with integrating regressors into the very successful exponential smoothing ...
Forecasting using time series (TS) models are often based on linear regression or methods using vari...
The Holt's linear exponential smoothing method has been frequently used to forecast a time series th...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...
Three general classes of state space models are presented, using the single source of error formulat...
It is established in this paper that exponential smoothing, in its most general linear form, is an o...
This paper examines exponential smoothing constants that minimize summary error measures associated ...
An approach to exponential smoothing that relies on a linear single source of error state space mode...
The characteristics of seasonally adjusted, exponentially smoothed forecasts are studied through the...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
In this work the several exponential smoothing type methods are briefly described, which are often u...
In this work the several exponential smoothing type methods are briefly described, which are often u...
The focus of this paper is on the relationship between the exponential smoothing methods of forecast...
The main objective of this paper is to provide analytical expressions for forecast variances that ca...
In this paper we apply the strategy of trend-damping to the popular Winters exponential smoothing sy...
This thesis is concerned with integrating regressors into the very successful exponential smoothing ...
Forecasting using time series (TS) models are often based on linear regression or methods using vari...
The Holt's linear exponential smoothing method has been frequently used to forecast a time series th...
Formerly, following method was proposed by us. Focusing that the equation of exponential smoothing m...