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基于最大似然法集成的黄曲条跳甲预警模型
引用本文:李亭,杨敬锋,彭晓琴,陈志民.基于最大似然法集成的黄曲条跳甲预警模型[J].安徽农业科学,2008,36(25).
作者姓名:李亭  杨敬锋  彭晓琴  陈志民
作者单位:1. 中山火炬职业技术学院,广东中山,528436
2. 华南农业大学工程学院,广东广州,510640
3. 西南财经大学天府学院,四川绵阳,651000
4. 华南农业大学公共基础课实验教学中心,广东广州,510640
基金项目:华南农业大学校科研和教改项目
摘    要:采用最大似然法模型,建立蔬菜黄曲条跳甲的预警模型,并且针对最大似然法一般需要比较多的训练样本才能准确预测的缺点,提出能够显著地提高学习系统的泛化能力的集成算法,即最大似然集成算法以减少对训练样本数量的要求。通过对广东省蔬菜黄曲条跳甲数据验证表明,最大似然集成算法的预警准确率比最近邻算法k、-mean聚类和支持向量机预警准确率都要高。

关 键 词:预警  黄曲条跳甲  最大似然法  集成算法

Study on the Early Warning Model of Phyllotreta striolata Based on the Maximum Likelihood Integration
LI Ting et al.Study on the Early Warning Model of Phyllotreta striolata Based on the Maximum Likelihood Integration[J].Journal of Anhui Agricultural Sciences,2008,36(25).
Authors:LI Ting
Abstract:The early warning model of Phyllotreta striolata in vegetables was set up by using the maximum likelihood model.Aiming at the disadvantage of the maximum likelihood that more training samples were needed for accurate prediction generally,its integration algorithm that could enhance the generalization ability of the learning system significantly was put forward.The maximum likelihood integration algorithm reduced the quantity demands of the training samples.The data of the test on P.striolata in vegetables in Guangdong Province,the accuracy rate of early warning by the maximum likelihood integration algorithm was higher than that by nearest-neighbor algorithm,k-mean clustering and support vector machine.
Keywords:Early warning  Phyllotreta striolata  Maximum likelihood  Integration algorithm
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