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Surrogate Model for Mixed-Variables Evolutionary Optimization Based on GLM and RBF Networks

机译:基于GLM和RBF网络的混合变量进化优化代理模型。

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Approximation of costly objective functions by surrogate models is an increasingly popular method in many engineering optimization tasks. Surrogate models can substantially decrease the number of expensive experiments or simulations needed to achieve an optimal or near-optimal solution. In this paper, a novel surrogate model is presented. Compared to the most of the surrogate models reported in the literature, it has an advantage of explicitly dealing with mixed continuous and discrete variables. The model use radial basis function networks for continuous and clustering and a generalized linear model for the discrete covariates. The applicability of the model is shown on a benchmark problem, and the model's regression performance is further measured on a dataset from a real-world application.
机译:在许多工程优化任务中,通过代理模型逼近昂贵的目标函数是一种越来越流行的方法。代理模型可以大大减少实现最佳或接近最佳解决方案所需的昂贵实验或仿真的数量。本文提出了一种新颖的代理模型。与文献中报告的大多数替代模型相比,它具有显式处理混合的连续变量和离散变量的优势。该模型使用径向基函数网络进行连续和聚类,并对离散协变量使用广义线性模型。在基准问题上显示了模型的适用性,并在来自实际应用程序的数据集上进一步测量了模型的回归性能。

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