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Obtaining interval estimates of nonlinear model parameters based on combined soft computing tools

机译:基于组合软计算工具获取非线性模型参数的间隔估计

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摘要

Obtaining interval estimates of nonlinear model parameters is as important as point estimates of model parameters. Because the estimated value of the parameters cannot always be expressed as a single numerical quantity exactly. In this study, it is aimed to propose an interval estimation procedure for nonlinear model parameters with combining soft computing methods instead of using probabilistic assumptions. For this purpose, response and model parameters were presented as triangular fuzzy numbers (TFNs) in nonlinear regression model. The errors were defined as intervals through alpha-cut operations and minimized according to the least absolute deviation (LAD) metric. The novelty of the study is achieving the minimization in a multi-objective framework in which the objective functions are lower and upper bound of interval type error functions. The NSGA-II (Non-dominated Sorting Genetic Algorithm-II) and the TOPSIS (Technique for Order Preference by Similarity to Ideal Solution) methods were used for multi-objective optimization (MOO) and multi-criteria decision making (MCDM) stages, respectively. Innovatively, in order to obtain reasonable interval estimates, predefined sized compromise solution set was composed and the fuzzy C-means (FCM) clustering algorithm was applied to the compromise set of interval estimates according to the predicted alpha-cut values. The proposed interval estimation approach is applied on a synthetic and a real data sets for application purpose.
机译:获得非线性模型参数的间隔估计与模型参数的点估计一样重要。因为参数的估计值不能总是被表示为单个数量。在本研究中,旨在提出用于非线性模型参数的间隔估计过程,其组合软计算方法而不是使用概率假设。为此目的,响应和模型参数在非线性回归模型中呈现为三角模糊数(TFN)。错误被定义为通过α-CUT操作的间隔,并根据最小绝对偏差(LAD)度量最小化。该研究的新颖性正在实现多目标框架中的最小化,其中客观函数是间隔类型误差函数的较低和上限。 NSGA-II(非主导的分类遗传算法-II)和TOPSIS(通过与理想解决方案相似的顺序偏好)方法用于多目标优化(MOO)和多标准决策(MCDM)阶段,分别。创新性地,为了获得合理的间隔估计,组成预定义大小的折衷解决方案组,并且根据预测的α-CUT值将模糊C-icly(FCM)聚类算法应用于折衷的间隔估计。所提出的间隔估计方法适用于合成和实际数据集以进行应用目的。

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