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Forecasting trend data using a hybrid simple moving average-weighted fuzzy time series model

机译:使用混合简单移动平均加权模糊时间序列模型预测趋势数据

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First order fuzzy time series (1st order FTS) is one of popular time series forecasting models. Since employing the first lag variable and using fuzzy logical relationship to derive the forecasting value, 1st order FTS is often unsuccessful in analyzing trend time series. On the other hand, moving averages can be used to quickly identify the direction of trend by smoothing the data. However, moving averages are lagging indicators that will always be a step behind and give late signals. Therefore, It had better not use moving averages alone as a forecasting model. This paper proposed a hybrid approach based on moving averages and weighted fuzzy time series (WFTS) model to analyze and forecast the trend time series data. By using both models jointly, it is expected that the different forms of pattern in time series data can be captured. This hybrid model takes advantage of moving averages in identifying trend direction and WFTS to model the stationary residuals series after removing trend effect using moving averages. The proposed moving averages and WFTS hybrid approach is applied to historical enrollment data for the University of Alabama and maize production data for Indonesia. Comparisons with other previous methods proposed in the literature show that combination of moving averages and WFTS model yields the smallest root mean square error (RMSE).
机译:一阶模糊时间序列(1阶FTS)是流行的时序预测模型之一。由于采用第一个滞后变量并使用模糊逻辑关系来导出预测值,因此在分析趋势时间序列时,第一订单FT通常不成功。另一方面,可以使用移动平均值来通过平滑数据来快速识别趋势的方向。然而,移动平均数是滞后指示灯,将始终是落后并提供迟到的信号。因此,它更好地不使用单独的移动平均值作为预测模型。本文提出了一种基于移动平均线和加权模糊时间序列(WFT)模型的混合方法,用于分析和预测趋势时间序列数据。通过共同使用两个模型,可以捕获时间序列数据中不同形式的模式。这种混合模型利用了在使用移动平均值去除趋势效果之后识别趋势方向和WFT来识别趋势方向和WFT的平均值。拟议的移动平均和WFTS混合方法适用于阿拉巴马大学和印度尼西亚玉米生产数据的历史入学数据。与文献中提出的其他先前方法的比较表明,移动平均线和WFTS模型的组合产生了最小的根均方误差(RMSE)。

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