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Fuzzy multiobjective optimization with multivariate regression trees

机译:多元回归树的模糊多目标优化

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摘要

We introduce a new methodology in which multiobjective optimization is formulated as unsupervised learning through induction of multivariate regression trees. In particular, it is shown that learning of Pareto-optimal solutions can be efficiently accomplished by using a number of fuzzy tree partitioning criteria. These include: a newly formulated fuzzy method based on Kendall's nonparametric measure of association (G. Simon, 1977), Bellman-Zadeh's approach to multiobjective decision making utilized in an inductive framework (R.E. Bellman and L.A. Zadeh, 1970), and finally, multidimensional fuzzy entropy (B. Kosko, 1990). For purposes of comparison, the efficiency of learning with fuzzy partitioning criteria is compared with that of two conventional multivariate statistical techniques based on dispersion matrices. The widely used problem of design of a three bar truss is presented to highlight advantages of our new approach.
机译:我们介绍了一种新方法,其中通过归纳多元回归树将多目标优化公式化为无监督学习。特别地,示出了通过使用许多模糊树划分标准可以有效地完成帕累托最优解的学习。这些包括:基于肯德尔的非参数关联度量的新制定的模糊方法(G. Simon,1977),在归纳框架中利用Bellman-Zadeh的多目标决策方法(RE Bellman和LA Zadeh,1970),最后是多维模糊熵(B. Kosko,1990)。为了进行比较,将具有模糊划分标准的学习效率与基于分散矩阵的两种常规多元统计技术的学习效率进行了比较。提出了三杆桁架设计中广泛使用的问题,以突出我们新方法的优势。

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