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首页> 外文期刊>International Journal of Computational Intelligence and Applications >INTER-QUARTILE RANGE APPROACH TO LENGTH-INTERVAL ADJUSTMENT OF ENROLLMENT DATA IN FUZZY TIME SERIES FORECASTING
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INTER-QUARTILE RANGE APPROACH TO LENGTH-INTERVAL ADJUSTMENT OF ENROLLMENT DATA IN FUZZY TIME SERIES FORECASTING

机译:基于模糊时间序列的入学数据长度区间调整的区间间法

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摘要

Various methods have been presented to investigate the length of data interval and partition number of universe of discourse in fuzzy time series to achieve high level forecasting accuracy. However, the interval length is still an issue and thus, influencing the forecasting accuracy. This paper proposes a new approach using the average inter-quartile range to improve the interval length and subsequently the partition number of universe of discourse. Moreover, in forecasting method, the first-differencing data is also considered to obtain better forecast. The enrollment data of Alabama University is used as an example and the efficiency of the proposed method is compared with the previous methods. The result shows that the proposed method improves the accuracy and efficiency of the yearly enrollment forecasting opportunities.
机译:提出了多种方法研究模糊时间序列中数据区间的长度和话语空间的划分数,以达到较高的预测精度。但是,间隔长度仍然是一个问题,因此会影响预测准确性。本文提出了一种新的方法,利用四分位数之间的平均距离来改善语篇空间的间隔长度,进而改善话语空间的划分数量。此外,在预测方法中,还考虑了一阶微分数据以获得更好的预测。以阿拉巴马大学的招生数据为例,比较了所提方法的有效性。结果表明,该方法提高了年度招生预测机会的准确性和效率。

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