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FUZZY MODEL OPTIMIZATION FOR TIME SERIES DATA USING A TRANSLATION IN THE EXTENT OF MEAN ERROR | Science Publications

机译:均值误差范围内使用翻译进行时间序列数据的模糊模型优化科学出版物

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> Recently, many researchers in the field of writing about the prediction of stock price forecasting, electricity load demand and academic enrollment using fuzzy methods. However, in general, modeling does not consider the model position to actual data yet where it means that error is not been handled optimally. The error that is not managed well can reduce the accuracy of the forecasting. Therefore, the paper will discuss reducing error using model translation. The error that will be reduced is Mean Square Error (MSE). Here, the analysis is done mathematically and the empirical study is done by applying translation to fuzzy model for enrollment forecasting at the Alabama University. The results of this analysis show that the translation in the extent of mean error can reduce the MSE.
机译: >最近,许多写作领域的研究人员都在使用模糊方法预测股票价格,电力负荷需求和入学率。但是,一般而言,建模并未考虑模型在实际数据中的位置,但这意味着未对错误进行最佳处理。管理不善的错误可能会降低预测的准确性。因此,本文将讨论使用模型转换来减少错误。将减少的误差是均方误差(MSE)。在这里,数学分析是通过对阿拉巴马州大学的入学预测进行模糊模型转换和模糊研究来进行的。分析结果表明,平均误差范围内的翻译可以减少MSE。

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