首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >THE UNITED ADAPTIVE LEARNING ALGORITHM FOR THE LINK WEIGHTS AND SHAPE PARAMETER IN RBFN FOR PATTERN RECOGNITION
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THE UNITED ADAPTIVE LEARNING ALGORITHM FOR THE LINK WEIGHTS AND SHAPE PARAMETER IN RBFN FOR PATTERN RECOGNITION

机译:模式识别中RBFN的权重和形状参数的联合自适应学习算法

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摘要

This paper proposes a united training method of the link weights of the Gaussian radial basis function networks (GRBFN) and the shape parameter α of the RBF. The training method corresponding to the former is a kind of recursive least squares back-propagation (RLS-BP) learning algorithm which is an accurately recursive method, the training method corresponding to the latter is an adaptive gradient descending (AGD) searching algorithm which is an approximately approaching method. We use the one-dimensional images of radar targets to study the effect of the shape parameter α on the rate of recognition, and survey the changes of the shape parameter αs of radial basis functions corresponding to different hidden nodes, and present the judgement confidence curves of different radar targets. In addition, the forgotten factor λ which makes the effects on the speed of convergence is also discussed. The experimental results are presented.
机译:本文提出了一种高斯径向基函数网络(GRBFN)和RBF的形状参数α的链接权重的联合训练方法。前者对应的训练方法是一种递归最小二乘反向传播(RLS-BP)学习算法,它是一种精确的递归方法,后者对应的训练方法是一种自适应梯度下降(AGD)搜索算法,即一种近似的方法。我们使用雷达目标的一维图像研究形状参数α对识别率的影响,并调查对应于不同隐藏节点的径向基函数形状参数αs的变化,并给出判断置信度曲线不同的雷达目标。另外,还讨论了影响收敛速度的被遗忘因子λ。给出了实验结果。

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