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Grey-box radial basis function modelling

机译:灰色盒子径向基函数建模

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A fundamental principle in data modelling is to incorporate available a priori information regarding the underlying data generating mechanism into the modelling process. We adopt this principle and consider grey-box radial basis function (RBF) modelling capable of incorporating prior knowledge. Specifically, we show how to explicitly incorporate the two types of prior knowledge: (i) the underlying data generating mechanism exhibits known symmetric property, and (ii) the underlying process obeys a set of given boundary value constraints. The class of efficient orthogonal least squares regression algorithms can readily be applied without any modification to construct parsimonious grey-box RBF models with enhanced generalisation capability.
机译:数据建模的基本原理是将有关基础数据生成机制的可用先验信息合并到建模过程中。我们采用此原理,并考虑能够结合先验知识的灰箱径向基函数(RBF)建模。具体来说,我们展示了如何显式地合并两种类型的先验知识:(i)基础数据生成机制表现出已知的对称属性,并且(ii)基础过程遵循一组给定的边界值约束。一类有效的正交最小二乘回归算法可以很容易地应用而无需进行任何修改即可构建具有增强的泛化能力的简约灰盒RBF模型。

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