首页> 外国专利> MULTIPLE LINEAR REGRESSION-ARTIFICIAL NEURAL NETWORK HYBRID MODEL FOR PREDICTING THE ACENTRIC FACTORS OF PURE ORGANIC COMPOUNDS CAPABLE OF FORMING AN ARTIFICIAL NEURAL NETWORK OUTPUTTING THE ACENTRIC FACTORS BASED ON THE VALUES OF MOLECULAR DESCRIPTORS CONTAINED IN A MULTIPLE LINEAR REGRESSION MODEL

MULTIPLE LINEAR REGRESSION-ARTIFICIAL NEURAL NETWORK HYBRID MODEL FOR PREDICTING THE ACENTRIC FACTORS OF PURE ORGANIC COMPOUNDS CAPABLE OF FORMING AN ARTIFICIAL NEURAL NETWORK OUTPUTTING THE ACENTRIC FACTORS BASED ON THE VALUES OF MOLECULAR DESCRIPTORS CONTAINED IN A MULTIPLE LINEAR REGRESSION MODEL

机译:多个线性回归-人工神经网络混合模型,用于预测能够形成人工神经网络的纯有机化合物的心态因素,而该神经网络可以根据多个因数的摩尔分数来描述基于多个点的值

摘要

PURPOSE: A multiple linear regression-artificial neural network(MLR-ANN) hybrid model for predicting the acentric factors of pure organic compounds is provided to improve the performance of prediction.;CONSTITUTION: Molecular descriptors for the acentric factors of hydrocarbon-based compounds are prepared. Experimental data is classified based on a training set and a testing set. The optimal MLR model(MLRM) for the training set is searched. Entire samples are divided into three sets, and the optimal ANN model(ANNM) is searched. If the absolute value of the predicted acentric factor difference based on the optimal MLRM and the optimal ANNM is more than an over-fitting preventive reference value, the predicted acentric factors based on the MLRM is adopted as the acentric factors.;COPYRIGHT KIPO 2012
机译:目的:提供一种用于预测纯有机化合物偏心因子的多元线性回归人工神经网络(MLR-ANN)混合模型,以提高预测性能。准备好了。根据训练集和测试集对实验数据进行分类。搜索训练集的最佳MLR模型(MLRM)。将整个样本分为三组,并搜索最优的神经网络模型(ANNM)。如果基于最优MLRM和最优ANNM的预测中心误差因子的绝对值大于过拟合预防参考值,则采用基于MLRM的预测中心误差因子作为中心误差因子。; COPYRIGHT KIPO 2012

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