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A two-layer learning method for radial basis function networks using combined genetic and regularised OLS algorithms

机译:结合遗传和规则化OLS算法的径向基函数网络两层学习方法

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The paper presents a novel two-layer learning method for radial basis function (RBF) networks. At the lower layer, a regularised orthogonal least squares (ROLS) algorithm is employed to construct RBF networks while the two key learning parameters, the regularisation parameter and hidden node's width, needed by the ROLS algorithm are optimized using the genetic algorithm at the higher layer. Networks constructed by this learning method have superior generalisation properties, and the computational complexity of the method is reasonable. Nonlinear time series modelling and prediction is used as an example to demonstrate the effectiveness of this hierarchical learning approach.
机译:本文提出了一种用于径向基函数(RBF)网络的新型双层学习方法。在下层,采用正则化正交最小二乘(ROL)算法来构建RBF网络,而ROL算法所需的两个关键学习参数,正则化参数和隐藏节点的宽度使用较高层的遗传算法优化。由该学习方法构建的网络具有卓越的泛化属性,并且该方法的计算复杂性是合理的。非线性时间序列建模和预测用作展示该分层学习方法的有效性的示例。

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