Singh's Fuzzy Time Series Forecasting Modification Based on Interval Ratio

Erikha Feriyanto, F. Farikhin, Nikken Prima Puspita
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Abstract

Background: One forecasting method that is often used is time series forecasting. The development of applied mathematics has encouraged new mathematical findings that led to the birth of new branches of mathematics, one of which is fuzzy. Purpose: The objectives of the study, namely forecasting, fuzzy set, time series, fuzzy time series, fuzzy time series Singh, interval ratio and measurement of accuracy level. Method: This research method applies Chen's fuzzy time series in the section of determining the universe of talk you to the fuzzification of historical data and in the part of forecasting results obtained through a heuristic approach by building three forecasting rules, namely Rule 2.1, Rule 2.2, and Rule 2.3 to obtain better results and affect very small AFER values. As well as making modifications to the interval partition section using interval ratios to be able to reflect data variations. Results: Based on the calculation of AFER values for order 2, order 3, and order 4 respectively obtained at 1.06389%, 0.689368%, and 0.711947%. Therefore, it can be said, Singh's fuzzy time series forecasting method based on the ratio of 3rd-order intervals is better than that of 2nd-order and 4th-order. Conclusion: Based on the results of research and discussion that has been carried out, it can be concluded that Singh's fuzzy time series forecasting method has the same algorithm as fuzzy time series forecasting. Singh's fuzzy time series forecasting method based on interval ratios applies fuzzy time series and Singh forecasting. Singh's fuzzy time series forecasting modification accuracy rate based on interval ratios produces excellent forecasting values according to evaluator average forecasting error rate (AFER).
基于区间比率的辛格模糊时间序列预测修正
背景:经常使用的一种预测方法是时间序列预测。应用数学的发展鼓励了新的数学发现,导致了新的数学分支的诞生,模糊就是其中之一。目的:本研究的目标,即预测、模糊集、时间序列、模糊时间序列、模糊时间序列辛格、区间比率和准确度水平的测量:本研究方法将陈氏模糊时间序列应用于确定历史数据模糊化的谈话范围部分,以及通过启发式方法获得的预测结果部分,建立了三个预测规则,即规则 2.1、规则 2.2 和规则 2.3,以获得更好的结果并影响极小的 AFER 值。此外,还利用区间比率对区间划分部分进行了修改,以便能够反映数据的变化:根据计算结果,阶 2、阶 3 和阶 4 的 AFER 值分别为 1.06389%、0.689368% 和 0.711947%。因此可以说,辛格基于三阶区间比的模糊时间序列预测方法优于二阶和四阶预测方法:根据研究和讨论的结果,可以得出结论:辛格模糊时间序列预测法与模糊时间序列预测法具有相同的算法。基于区间比率的辛格模糊时间序列预测法应用了模糊时间序列和辛格预测法。根据评估者的平均预测误差率(AFER),辛格基于区间比率的模糊时间序列预测修正准确率产生了极好的预测值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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