The file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI link.Although the classic exponential-smoothing models and grey prediction models have been widely used in time series forecasting, this paper shows that they are susceptible to fluctuations in samples. A new fractional bidirectional weakening buffer operator for time series prediction is proposed in this paper. This new operator can effectively reduce the negative impact of unavoidable sample fluctuations. It overcomes limitations of existing weakening buffer operators, and permits better control of fluctuations from the entire sample period. Due to its good performance in improving stability of the ...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Both statistical and neural network methods may fail in forecasting time series even operating on a ...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
On the basis of the triple exponential smoothing prediction model, this paper introduces the reverse...
Simple methods like exponential smoothing are very popular for forecasting univariate time series. T...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
Reasonable prediction makes significant practical sense to stochastic and unstable time series analy...
In practice many data series contain observations at irregular times whereas most forecasting method...
Three general classes of state space models are presented, using the single source of error formulat...
This thesis is concerned with integrating regressors into the very successful exponential smoothing ...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
A two-stage forecasting approach for long memory time series is introduced. In the first step, we es...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Both statistical and neural network methods may fail in forecasting time series even operating on a ...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
On the basis of the triple exponential smoothing prediction model, this paper introduces the reverse...
Simple methods like exponential smoothing are very popular for forecasting univariate time series. T...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
Reasonable prediction makes significant practical sense to stochastic and unstable time series analy...
In practice many data series contain observations at irregular times whereas most forecasting method...
Three general classes of state space models are presented, using the single source of error formulat...
This thesis is concerned with integrating regressors into the very successful exponential smoothing ...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
A two-stage forecasting approach for long memory time series is introduced. In the first step, we es...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
Intermittent time series forecasting is a challenging task which still needs particular attention of...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...