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假设检验中Neyman-Pearson准则的神经网络实现新算法
引用本文:张兆礼,孙圣和. 假设检验中Neyman-Pearson准则的神经网络实现新算法[J]. 哈尔滨工业大学学报, 2001, 33(1): 48-51
作者姓名:张兆礼  孙圣和
作者单位:哈尔滨工业大学自动化测试与控制系,
摘    要:假设检验中Neyman-Pearson准则是一种基于似然比的信号检测、识别、分类方法。神经网络是实现这种准则的优选方案,但是传统的最小平方学习算法,如BP算法等,往往不能取得全局最优解。针对一种非最小平方学习算法,提出了一种概率分配原则,并给出了一种Neyman-Pearson准则的神经网络实现新算法。对新算法在假设检验中的应用进行了仿真验证。结果表明新算法具有更小的误差,更加适用于Neyman-Pearson准则。

关 键 词:多传感器 神经网络 数据融合 假设检验 NEYMAN-PEARSON准则
文章编号:0367-6234(2001)01-0048-04
修稿时间:1999-10-18

New neural network realization algorithm for Neyman-Pearson criterion in hypothesis testing
ZHANG Zhao-li,SUN Sheng-he. New neural network realization algorithm for Neyman-Pearson criterion in hypothesis testing[J]. Journal of Harbin Institute of Technology, 2001, 33(1): 48-51
Authors:ZHANG Zhao-li  SUN Sheng-he
Abstract:Presents the Neyman Pearson criterion in hypothesis testing based on the probability rate for problems such as classification, detection, and pattern recognition as an improved kind of nonleast square learning algorithm to decide the criterion of the probability distribution and gives a better algorithm based on the absolute error and concludes from simulation results that the new algorithm has less error and is more suitable for Neyman Pearson criterion.
Keywords:neural network   data fusion   hypothesis testing   Neyman-Pearson criterion
本文献已被 CNKI 维普 万方数据 等数据库收录!
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