Abstract

Problem statement: In the literature, the most studied of fuzzy time series for the purpose of forecasting is the first order fuzzy time series model. In this model, only the first lagged variable is used when constructing the first order fuzzy time series model. Therefore, such approaches fail to analyze accurately trend and seasonal time series which is an important class in time series models. Approach: In this paper, a hybrid approach is proposed in order to analyze trend and seasonal fuzzy time series. The proposed hybrid approach is based on Winter’s model and weighted fuzzy time series. The Winter’s model and the WFTS model are used jointly, aiming to capture different forms of pattern in the time series data. The order of this model is determined by utilizing graphical order fuzzy relationship. A real time series about tourist arrivals data is analyzed with this method to show the efficiency of the proposed hybrid method. Results: The results obtained from the proposed method are compared with the other methods, i.e., Decomposition, Winter’s and ARIMA models. As a result, it is observed that more accurate results are obtained from the proposed hybrid method. Conclusion: The empirical results with tourist arrivals data clearly suggest that the hybrid model is able to outperform each component model used in isolation the pattern of time series data. Moreover, these empirical evidences suggest that by using dissimilar models or models that disagree each other strongly, the hybrid model will have lower generalization variance or error. Additionally, because of the possible unstable or changing patterns in the data, using the hybrid method can reduce the model uncertainty which typically occurred in statistical inference and time series forecasting.

Highlights

  • The definitions of fuzzy time series were firstly introduced by Song and Chissom (1993a; 1993b) and they developed the model by using fuzzy relation equations and approximate reasoning

  • (2009) proposed a new hybrid approach based on SARIMA and partial high order bivariate fuzzy time series for forecasting seasonal data

  • A new hybrid model based on the Winter’s model and weighted fuzzy time series is proposed to improve the forecast accuracy in trend and seasonal data. This approach follows the idea from Zhang (2003) who proposed a hybrid model based on ARIMA and Neural Network model

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Summary

INTRODUCTION

The definitions of fuzzy time series were firstly introduced by Song and Chissom (1993a; 1993b) and they developed the model by using fuzzy relation equations and approximate reasoning. A new hybrid model based on the Winter’s model and weighted fuzzy time series is proposed to improve the forecast accuracy in trend and seasonal data This approach follows the idea from Zhang (2003) who proposed a hybrid model based on ARIMA and Neural Network model. This study shows that by using a series of monthly tourist arrivals to Bali, Indonesia, the hybrid approach with an exponential chronological weight (Lee and Suhartono, 2010) outperforms the hybrid fuzzy time series proposed by Chen (1996); Yu (2005) and Cheng et al (2008) and some classical methods, i.e., Decomposition, Winter’s and ARIMA models. The last 12 observations are reserved as the test for forecasting evaluation and comparison (out-sample dataset or testing data)

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