自适应神经模糊推理系统(ANFIS)与非线性回归在估计和预测方面的比较

Wang Xiangjun, M. M. AL-Hashimi
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引用次数: 2

摘要

大多数研究,特别是经济研究的主要目的是为了获得一个好的估计以及对未来的预测。最后一个目标是探讨未来的经济计划是采用的,战略政策是发展。这些计划和策略的成败取决于预测的可信度。尽管自适应神经模糊推理系统(ANFIS)具有简单灵活的特点,在大多数情况下都能达到完美的估计,但能否获得良好的预测结果却令人怀疑。本文将ANFIS作为一种智能方法与非线性回归(NL)作为一种经典方法来定义估计和预测能力进行了比较。为此,我们选择了十种长度和形状不同的非线性数据类型。使用了安德森-达令测试。我们得出结论,其中6个为正态分布,其余为非正态分布。通过分析,可以清楚地看出NL最适合于预测,而ANFIS最适合于估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The comparison of Adaptive Neuro-Fuzzy Inference System (ANFIS) with nonlinear regression for estimation and prediction
The main purpose of the most research, especially the economic one is to access a good estimate as well as the prediction for the future. The last objective is to explore the future by which the economic plan is adopted, and the strategic policy is development. The success or failure of these plans and strategies depends on the credibility of the prediction. In spite of the Adaptive Neuro-Fuzzy Inference System (ANFIS) is characterized by being simple and flexible and have the ability to reach a perfect estimate in most cases, but the potentials in the access a good predictions are questionable. In this paper, the comparison of the (ANFIS) as an intelligence method and the Nonlinear regression (NL) as a classic method applied to define the ability of estimation and prediction. For this purpose, we choose ten nonlinear types of data, which is different in length and shape. The Anderson-Darling test is used. We conclude that six of them distributed as normal distribution while the remaining are not. By the analysis, it seems clearly that the NL is best for prediction, while the ANFIS is perfect for the estimation.
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