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基于多类支持向量机的化学物质生态危害分类研究
引用本文:杨雪梅,李书琴,杨会君,刘济宁.基于多类支持向量机的化学物质生态危害分类研究[J].生态与农村环境学报,2012,28(2):217-220.
作者姓名:杨雪梅  李书琴  杨会君  刘济宁
作者单位:1. 西北农林科技大学信息工程学院,陕西杨凌,712100
2. 环境保护部南京环境科学研究所,江苏南京,210042
基金项目:环保公益性行业科研专项
摘    要:应用多类支持向量机(M-SVMs)方法研究了化学物质生态危害程度的分类,以提高分类的准确性和效率.对采集到的61种环境优先污染物的环境行为和生物毒性方面的7项指标进行相关性分析,建立了M-SVMs分类模型并对数据集进行10折交叉验证以评价模型的分类能力,运用所建模型对7种化学物质的生态危害进行预测.结果表明,去除与鱼毒有信息重叠的溞毒指标,选取鱼毒、藻毒、降解性、蓄积性、分配系数和吸附系数6项指标用于构建M-SVMs分类模型;M-SVMs模型识别率较高,交叉验证平均分类正确率达86.89%;对7种化学物质生态危害的预测结果与实际情况基本相符.

关 键 词:多类支持向量机  化学物质  生态危害  分类

Classification of Chemicals by Ecological Hazard Using Multi-Class Support Vector Machines
YANG Xue-mei , LI Shu-qin , YANG Hui-jun , LIU Ji-ning.Classification of Chemicals by Ecological Hazard Using Multi-Class Support Vector Machines[J].Journal of Ecology and Rural Environment,2012,28(2):217-220.
Authors:YANG Xue-mei  LI Shu-qin  YANG Hui-jun  LIU Ji-ning
Institution:1.College of Information Engineering,Northwest A&F University,Yangling 712100,China;2.Nanjing Institute of Environmental Sciences,Ministry of Environmental Protection,Nanjing 210042,China)
Abstract:Classification of chemicals by ecological hazard was studied with the multi-class support vector machines(M-SVMs) to improve accuracy and efficiency of the classification.A total of 6l environmental priority pollutants that had already been collected were analyzed for correlation between 7 indexes in the aspects of environmental behavior and biotoxicity.On such a basis a M-SVMs classification model was established and 10-fold cross validation of its dataset was conducted to evaluate classification ability of the model.Then the model was applied to predict ecological hazard of 7 chemicals.Results show that the index of daphnia toxicity,overlapping some of the information of the index of fish toxicity,was excluded from the 7 indexes.So only 6,i.e.as fish toxicity,alga toxicity,biodegradability,bioconcentration,distributivity and adsorbability were selected in building the M-SVMs classification model.The M-SVMs model was quite high in identification rate and cross-validation indicated that its mean classification accuracy reached up to 86.89%,and its prediction of the 7 chemicals in ecological hazard basically tallies with the actual situation.
Keywords:multi-class support vector machines(M-SVMs)  chemicals  ecological hazard  classification
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