Modeling Vague Data with Genetic Fuzzy Systems under a Combination of Crisp and Imprecise Criteria

L. Sánchez, Inés Couso, J. Casillas
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引用次数: 47

Abstract

Multicriteria genetic algorithms can produce fuzzy models with a good balance between their precision and their complexity. The accuracy of a model is usually measured by the mean squared error of its residual. When vague training data is used, the residual becomes a fuzzy number, and it is needed to optimize a combination of crisp and fuzzy objectives in order to learn balanced models. In this paper, we will extend the NSGA-II algorithm to this last case, and test it over a practical problem of causal modeling in marketing. Different setups of this algorithm are compared, and it is shown that the algorithm proposed here is able to improve the generalization properties of those models obtained from the defuzzified training data.
在清晰准则和不精确准则的结合下用遗传模糊系统建模模糊数据
多准则遗传算法可以在精度和复杂度之间取得很好的平衡。模型的精度通常用其残差的均方误差来衡量。当使用模糊训练数据时,残差成为一个模糊数,需要对清晰目标和模糊目标的组合进行优化,以学习到平衡模型。在本文中,我们将NSGA-II算法扩展到最后一个案例,并在营销因果建模的实际问题上进行测试。比较了该算法的不同设置,结果表明,该算法能够提高从去模糊化的训练数据中得到的模型的泛化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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