首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Support vector machine based training of multilayer feedforward neural networks as optimized by particle swarm algorithm: Application in QSAR studies of bioactivity of organic compounds
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Support vector machine based training of multilayer feedforward neural networks as optimized by particle swarm algorithm: Application in QSAR studies of bioactivity of organic compounds

机译:粒子群算法优化的基于支持向量机的多层前馈神经网络训练:在有机化合物生物活性的QSAR研究中的应用

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Multilayer feedforward neural networks (MLFNNs) are important modeling techniques widely used in QSAR studies for their ability to represent nonlinear relationships between descriptors and activity. However, the problems of overfitting and premature convergence to local optima still pose great challenges in the practice of MLFNNs. To circumvent these problems, a support vector machine (SVM) based training algorithm for MLFNNs has been developed with the incorporation of particle swarm optimization (PSO). The introduction of the SVM based training mechanism imparts the developed algorithm with inherent capacity for combating the overfitting problem. Moreover, with the implementation of PSO for searching the optimal network weights, the SVM based learning algorithm shows relatively high efficiency in converging to the optima. The proposed algorithm has been evaluated using the Hansch data set. Application to QSAR Studies of the activity of COX-2 inhibitors is also demonstrated. The results reveal that this technique provides superior performance to backpropagation (BP) and PSO training neural networks. (C) 2006 Wiley Periodicals, Inc.
机译:多层前馈神经网络(MLFNN)是重要的建模技术,因其能够表示描述符与活动之间的非线性关系而广泛用于QSAR研究。然而,在MLFNN的实践中,过拟合和过早收敛到局部最优的问题仍然提出了很大的挑战。为了解决这些问题,已经结合粒子群优化(PSO)开发了基于支持向量机(SVM)的MLFNN训练算法。基于SVM的训练机制的引入使所开发的算法具有解决过拟合问题的固有能力。此外,通过使用PSO搜索最佳网络权重,基于SVM的学习算法在收敛到最优值方面显示出较高的效率。使用Hansch数据集对提出的算法进行了评估。在QSAR中的应用还证明了COX-2抑制剂的活性研究。结果表明,该技术为反向传播(BP)和PSO训练神经网络提供了卓越的性能。 (C)2006年Wiley Periodicals,Inc.

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