首页> 外文期刊>Talanta: The International Journal of Pure and Applied Analytical Chemistry >Artificial neural network-based transformation for nonlinear partial least-square regression with application to QSAR studies
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Artificial neural network-based transformation for nonlinear partial least-square regression with application to QSAR studies

机译:基于人工神经网络的非线性偏最小二乘回归分析及其在QSAR研究中的应用

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摘要

In the present study a new version of nonlinear partial least-square method based on artificial neural network transformation (ANN-NLPLS) has been proposed.This algorithm firstly transforms the training descriptors into the hidden layer outputs using the universal nonlinear mapping carried by an artificial neural network,and then utilizes PLS to relate the outputs of the hidden layer to the bioactivities.The weights between the input and hidden layers are optimized by a particle swarm optimization (PSO) method using the criterion of minimized model error via PLS modeling.An F-statistic is introduced to determine automatically the number of PLS components during the weight optimization.The performance is assessed using a simulated data set and two quantitative structure-activity relation (QSAR) data sets.Results of these three data sets demonstrate that ANN-NLPLS offers enhanced capacity in modeling nonlinearity while circumventing the overfitting frequently involved in nonlinear modeling.
机译:本研究提出了一种新的基于人工神经网络变换的非线性偏最小二乘方法(ANN-NLPLS),该算法首先利用人工携带的通用非线性映射将训练描述符转换为隐藏层输出。神经网络,然后利用PLS将隐藏层的输出与生物活性相关联。输入层和隐藏层之间的权重通过PLS建模以最小化模型误差为标准,通过粒子群优化(PSO)方法进行优化。引入F统计量来自动确定重量优化过程中的PLS组件数量。使用模拟数据集和两个定量构效关系(QSAR)数据集评估性能。这三个数据集的结果表明ANN- NLPLS提供了增强的非线性建模能力,同时避免了非线性建模中经常涉及的过拟合问题。 ng。

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