基于粗糙约简的支持向量机集合在农药乙氧虫腈类似物SAR中的应用

Yue Liu, Zaixia Teng, Yafeng Yin, Guozheng Li
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引用次数: 0

摘要

神经网络集成是研究构效关系(SAR)的一个很有前途的工具。在支持向量机(SVM)的基础上,提出了一种基于分子描述符的基于粗糙约简的支持向量机集成(RRSE)方法来判别乙烯醚菊酯类似物的高低活性。利用RRSE,通过训练数据集在充分必要属性集(约简)上的投影来构造集成模型的单个支持向量机。最后,通过多数投票将所有个体的结果结合起来,最终确定预测乙醚菊酯类似物活性的集合结果,准确率为93.5%。实验结果表明,RRSE的性能优于套袋支持向量机、基于最优约简的支持向量机和单个支持向量机。因此,RRSE在SAR研究中具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Rough Reducts Based SVM Ensemble for SAR of the Ethofenprox Analogous of Pesticide
Neural networks ensemble is a promising tool in the field of structure-activity relationship (SAR). Based on support vector machine (SVM), a new method called RRSE (rough reducts based SVM ensemble) is employed to discriminate between high and low activities of ethofenprox analogous based on the molecular descriptors. By using RRSE, individual SVMs of ensemble model are constructed by projection of training dataset on sufficient and necessary attribute sets (reducts). Finally, the results from all individuals are combined by majority voting to finalize the ensemble results which predict activities of ethofenprox analogous with accuracy of 93.5%. Experimental results indicate that performance of RRSE is better than those of SVM bagging, optimal reducts based SVM and single SVM. Therefore, RRSE could be a promising and useful tool in SAR research.
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