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Predicting Complexation Thermodynamic Parameters of β-Cyclodextrin with Chiral Guests by Using Swarm Intelligence and Support Vector Machines

机译:群体智能和支持向量机预测β-环糊精与手性客体的络合热力学参数

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摘要

The Particle Swarm Optimization (PSO) and Support Vector Machines (SVMs) approaches are used for predicting the thermodynamic parameters for the 1:1 inclusion complexation of chiral guests with β-cyclodextrin. A PSO is adopted for descriptor selection in the quantitative structure-property relationships (QSPR) of a dataset of 74 chiral guests due to its simplicity, speed, and consistency. The modified PSO is then combined with SVMs for its good approximating properties, to generate a QSPR model with the selected features. Linear, polynomial, and Gaussian radial basis functions are used as kernels in SVMs. All models have demonstrated an impressive performance with R2 higher than 0.8.
机译:粒子群优化(PSO)和支持向量机(SVM)方法用于预测手性客体与β-环糊精的1:1包合物的热力学参数。由于PSO的简单性,速度和一致性,因此在74个手性宾客的数据集的定量结构-属性关系(QSPR)中采用描述符进行选择。然后,将经过修改的PSO与SVM相结合,以提供良好的近似性能,从而生成具有选定特征的QSPR模型。线性,多项式和高斯径向基函数用作SVM中的内核。所有型号均表现出令人印象深刻的性能,R 2 高于0.8。

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