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Overcoming the Linearity of Ordinal Logistic Regression Adding Non-linear Covariates from Evolutionary Hybrid Neural Network Models

机译:克服序数Logistic回归的线性,从进化混合神经网络模型中添加非线性协变量

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This paper proposes a non-linear ordinal logistic regression method based on the combination of a linear regression model and an evolutionary neural network with hybrid basis functions, combining Sig-moidal Unit and Radial Basis Functions neural networks. The process for obtaining the coefficients is carried out in several steps. Firstly we use an evolutionary algorithm to determine the structure of the hybrid neural network model, in a second step we augment the initial feature space (covariate space) adding the non-linear transformations of the input variables given by the hybrid hidden layer of the best individual of the evolutionary algorithm. Finally, we apply an ordinal logistic regression in the new feature space. This methodology is tested using 10 benchmark problems from the UCI repository. The hybrid model outperforms both the RBF and the SU pure models obtaining a good compromise between them and better results in terms of accuracy and ordinal classification error.
机译:本文提出了一种基于线性回归模型和具有混合基函数的演化神经网络相结合的非线性有序逻辑回归方法,将Sig-Moidal单元和径向基函数神经网络相结合。获得系数的过程分几个步骤进行。首先,我们使用进化算法来确定混合神经网络模型的结构,第二步,我们增加了初始特征空间(协变量空间),并添加了最佳混合隐层给出的输入变量的非线性变换。进化算法的个体。最后,我们在新特征空间中应用序数逻辑回归。使用UCI信息库中的10个基准问题测试了该方法。混合模型优于RBF和SU纯模型,在它们之间取得了很好的折衷,并在准确性和顺序分类误差方面取得了更好的结果。

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