Abstract

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 autoregressive models are estimated by using a harmony search algorithm, and the forecasts are obtained with a subsampling bootstrap approach. The main contribution of the paper is to consider the time-varying smoothing parameters with autoregressive equations and use the bootstrap method in an exponential smoothing method. The real-world time series are used to show the forecasting performance of the proposed method.

Highlights

  • Exponential smoothing methods were published in the late 1950s [1,2,3], and they are known as some of the most successful forecasting methods in the literature

  • Considering the average rank obtained from all methods, it can be said that the proAlthough the Holt method is used as a traditional time series forecasting method, it is posed method for the mean absolute percentage error (MAPE) criterion has more successful results than other methods

  • As known that it has some problems, such as the determination of the initial trend and level a final comment, when all analysis results are examined, it can be said from both average values and determining the trend and level update formulas

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Summary

Introduction

Exponential smoothing methods were published in the late 1950s [1,2,3], and they are known as some of the most successful forecasting methods in the literature. The Holt method has a forecasting equation and two smoothing equations, which are for the level of the series and slope of the trend as given in Equations (1)–(3). In Equations (1)–(3), λ1 and λ2 are the smoothing parameters of mean level and slope, respectively, and these parameters get values between zero and one In these equations, the initial values are obtained by applying simple linear regression to the series. The Holt method is modified by using time-varying smoothing parameters instead of fixed on time, and the smoothing parameters of mean level and slope are obtained for each observation with first-order autoregressive models. The parameters of the autoregressive models are estimated by using the harmony search algorithm (HSA) With these contributions, the proposed method eliminates the initial parameter determination problem.

Harmony Search Algorithm
Proposed Method
Applications
Conclusions and Discussion
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