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A New Complex-Valued Polynomial Model

机译:一种新的复数多项式模型

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摘要

This paper presents a novel complex-valued polynomial model (CPM) for real-valued prediction and classification problems. In a CPM, function, independent variables and dependent variables are complex-valued. Before CPM optimization, real-valued data need to be converted into complex values. As the linear version of additive tree model, additive expression tree is proposed to optimize the complex-valued structure of CPM. Real parts and imaginary parts of the complex-valued coefficients are encoded into a chromosome and brain storm optimization is utilized to evolve the complex-valued coefficients of CPM. CPM is utilized to predict three financial datasets and classify n-class problems. The prediction results show that CPM presents higher forecasting accuracy than real-valued polynomial model, other real-valued neural networks and ordinary differential equation. The classification performance of CPM is compared with existing methods on IRIS, Liver and Ionosphere datasets. And the results reveal that CPM performs better than well-established and newly proposed real-valued classifiers.
机译:本文提出了一种新型复合值多项式模型(CPM),用于实验预测和分类问题。在CPM,函数,独立变量和依赖变量中是复数的复杂变量。在CPM优化之前,需要将实际数据转换为复数。作为添加剂树模型的线性版本,提出了添加剂表达树,优化CPM的复合结构。复值系数的实际部分和虚部被编码成染色体,并且利用脑风暴优化来发展CPM的复值系数。 CPM用于预测三个金融数据集并对N类问题进行分类。预测结果表明,CPM比实值多项式模型,其他真实的神经网络和常微分方程所呈现更高的预测精度。将CPM的分类性能与虹膜,肝脏和电离层数据集上的现有方法进行比较。结果表明,CPM表现优于完善和新提出的真实价值的分类器。

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