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Adaptive configuration of radial basis function network by regression tree allied with hybrid particle swarm optimization algorithm

机译:混合粒子群优化算法的回归树对径向基函数网络的自适应配置。

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摘要

Configuration of a radial basis function network (RBFN) comprises identifying the network parameters (inputs, centers as well as widths in RBF units, and weights between the hidden and output layers) and architecture. The issues of overfitting and local optima often happened during RBFN training. To rectify this situation, regression tree (RT), allied with hybrid particle swarm optimization (PSO) algorithm, was invoked to configure an RBFN to form the HPSORTRBFN algorithm in the present study. Discrete PSO was invoked to obtain an RT of the right size. The regions in the instance space defined by the leaf nodes of the grown RT were transformed into the centers in RBF units and the number of leaf nodes acted as the network structure. The splitting variables in RT became the inputs in RBFN. The widths and weights in RBFN were simultaneously optimized by continuous PSO. HPSORTRBFN was applied to predict the anti-HIV activities of 1-[(2-Hydroxyethoxy)methyl]-6-(phenylthio)thymine (HEPT) analogues and the bioactivities of flavonoid derivatives. The results showed RT allied with HPSO is able to configure a globally optimal RBFN and HPSORTRBFN owns superior modeling performance to RBFN and RT.
机译:径向基函数网络(RBFN)的配置包括标识网络参数(RBF单位的输入,中心以及宽度,以及隐藏层和输出层之间的权重)和体系结构。 RBFN训练期间经常发生过度拟合和局部最优的问题。为了纠正这种情况,在本研究中,调用了回归树(RT)和混合粒子群优化(PSO)算法,以配置RBFN以形成HPSORTRBFN算法。调用离散PSO以获得正确大小的RT。由增长的RT的叶节点定义的实例空间中的区域以RBF单位转换为中心,叶节点的数量充当网络结构。 RT中的拆分变量成为RBFN中的输入。 RBFN的宽度和重量通过连续的PSO同时优化。 HPSORTRBFN被用于预测1-[((2-乙氧基乙氧基)甲基] -6-(苯硫基)胸腺嘧啶(HEPT)类似物的抗HIV活性和类黄酮衍生物的生物活性。结果表明,与HPSO联合的RT能够配置全局最佳的RBFN,而HPSORTRBFN的建模性能优于RBFN和RT。

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