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首页> 外文期刊>Journal of Software Engineering and Applications >Using Genetic Algorithms for Solving the Comparison-Based Identification Problem of Multifactor Estimation Model
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Using Genetic Algorithms for Solving the Comparison-Based Identification Problem of Multifactor Estimation Model

机译:用遗传算法解决基于比较的多因素估计模型辨识问题

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In this paper the statement and the methods for solving the comparison-based structure-parametric identification problem of multifactor estimation model are addressed. A new method that combines heuristics methods with genetic algorithms is proposed to solve the problem. In order to overcome some disadvantages of using the classical utility functions, the use of nonlinear Kolmogorov-Gabor polynomial, which contains in its composition the first as well as higher characteristics degrees and all their possible combinations is proposed in this paper. The use of nonlinear methods for identification of the multifactor estimation model showed that the use of this new technique, using as a utility function the nonlinear Kolmogorov-Gabor polynomial and the use of genetic algorithms to calculate the weights, gives a considerable saving in time and accuracy performance. This method is also simpler and more evident for the decision maker (DM) than other methods.
机译:本文阐述了解决基于比较的多参数估计模型结构参数识别问题的陈述和方法。提出了一种结合启发式方法和遗传算法的新方法来解决该问题。为了克服使用经典效用函数的一些缺点,本文提出了使用非线性Kolmogorov-Gabor多项式的方法,该多项式在其组成中包含第一个以及更高的特征度及其所有可能的组合。使用非线性方法识别多因素估计模型表明,使用这项新技术,使用非线性Kolmogorov-Gabor多项式作为效用函数以及使用遗传算法计算权重,可节省大量时间和精力。准确性表现。与其他方法相比,此方法对于决策者(DM)也更加简单和明显。

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