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An Enhanced Fuzzy Linguistic Term Generation and Representation for time series forecasting

机译:用于时间序列预测的增强型模糊语言术语生成和表示

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This paper introduces an enhancement to linguistic forecast representation using Triangular Fuzzy Numbers (TFNs) called Enhanced Linguistic Generation and Representation Approach (ElinGRA). Since there is always an error margin in the predictions, there is a need to define error bounds in the forecast. The interval of the proposed presentation is generated from a Fuzzy logic based Lower and Upper Bound Estimator (FLUBE) by getting the models of forecast errors. Thus, instead of a classical statistical approaches, the level of uncertainty associated with the point forecasts will be defined within the FLUBE bounds and these bound can be used for defining fuzzy linguistic terms for the forecasts. Here, ElinGRA is proposed to generate triangular fuzzy numbers (TFNs) for the predictions. In addition to opportunity to handle the forecast as linguistic terms which will increase the interpretability, ElinGRA improved forecast accuracy of constructed TFNs by adding an extra correction term. The results of the experiments, which are conducted on two data sets, show the benefit of using ElinGRA to represent the uncertainty and the quality of the forecast.
机译:本文介绍了一种使用三角模糊数(TFN)的语言预测表示的增强功能,称为增强语言生成和表示方法(ElinGRA)。由于预测中始终存在误差范围,因此需要在预测中定义误差范围。通过获取预测误差模型,可以从基于模糊逻辑的上下边界估计器(FLUBE)生成建议的演示文稿的间隔。因此,代替经典的统计方法,与点预测相关的不确定性级别将在FLUBE范围内定义,并且这些范围可用于定义预测的模糊语言术语。在这里,建议使用ElinGRA生成三角模糊数(TFN)进行预测。除了有机会将预测作为语言术语来处理(这将增加可解释性)外,ElinGRA还通过添加额外的校正项来提高构建的TFN的预测准确性。在两个数据集上进行的实验结果表明,使用ElinGRA表示不确定性和预测质量的好处。

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