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Radial basis function network-based transformation for nonlinear partial least-squares as optimized by particle swarm optimization: Application to QSAR studies

机译:粒子群算法优化的非线性局部最小二乘的基于径向基函数网络的变换:在QSAR研究中的应用

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摘要

This study presented a new version of the nonlinear partial least-squares method on the optimized radial basis function network transformation by particle swarm optimization (PSORBFPLS). This algorithm firstly transformed the training inputs into the hidden outputs using the nonlinear transformation carried by a radial basis function network (RBFN), and then employed linear partial least-squares (PLS) to relate the outputs of the hidden layer to the bioactivities. The widths and centers involved in RBF transformation were optimized by particle swarm optimization (PSO) with the minimized model error via PLS modeling as the criterion. The number of latent variables associated with PLS modeling was automatically identified by F-statistic. Two QSAR data sets were used to evaluate the performance of the newly proposed PSORBFPLS. Results of these two data sets demonstrated that PSORBFPLS offers substantially enhanced capacities in modeling nonlinearity while circumvents overfitting frequently encountered in nonlinear modeling.
机译:这项研究提出了一种新的非线性局部最小二乘法,用于通过粒子群算法(PSORBFPLS)优化的径向基函数网络变换。该算法首先使用径向基函数网络(RBFN)进行的非线性变换将训练输入转换为隐藏输出,然后使用线性偏最小二乘(PLS)将隐藏层的输出与生物活性相关联。通过粒子群优化(PSO)优化了RBF变换涉及的宽度和中心,并以PLS建模为标准,将模型误差最小化。通过F统计量自动识别与PLS建模相关的潜在变量的数量。使用两个QSAR数据集来评估新提出的PSORBFPLS的性能。这两个数据集的结果表明,PSORBFPLS提供了大大增强的非线性建模能力,同时避免了非线性建模中经常遇到的过度拟合问题。

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