Tomand D, Schober A
Institute for Physical High Technology Jena, Micro Systems Division, Germany.
Neural Netw. 2001 Oct;14(8):1023-34. doi: 10.1016/s0893-6080(01)00051-x.
A Modified General Regression Neural Network (MGRNN) is presented as an easy-to-use 'black box'-tool to feed in available data and obtain a reasonable regression surface. The MGRNN is based on the General Regression Neural Network by D. Specht [Specht, D. (1991). A General Regression Neural Network. IEEE Transactions on Neural Networks, 2(6), 568-576], therefore, the network's architecture and weights are determined. The kernel width of each training sample is trained by two supervised training algorithms. These fast and reliable algorithms require four user-definable parameters, but are robust against changes of the parameters. Its generalization ability was tested with different benchmarks: intertwined spirals, Mackey-Glass time series and PROBEN1. The MGRNN provides two additional features: (1) it is trainable with arbitrary data as long as a suitable metric exists. Particularly, it is unnecessary to force the data structure to vectors of equal length; (2) it is able to compute the gradient of the regression surface as long as the gradient of the metric is definable and defined. The MGRNN solves common practical problems of common feed-forward networks.
一种改进的广义回归神经网络(MGRNN)被提出,作为一种易于使用的“黑匣子”工具,用于输入可用数据并获得合理的回归曲面。MGRNN基于D. Specht提出的广义回归神经网络[Specht, D. (1991). 广义回归神经网络。《IEEE神经网络汇刊》,2(6), 568 - 576],因此,网络的架构和权重是确定的。每个训练样本的核宽度由两种监督训练算法进行训练。这些快速且可靠的算法需要四个用户可定义的参数,但对参数的变化具有鲁棒性。其泛化能力通过不同的基准测试进行了检验:交织螺旋线、Mackey - Glass时间序列和PROBEN1。MGRNN提供了两个额外的特性:(1)只要存在合适的度量,它就可以用任意数据进行训练。特别地,无需将数据结构强制转换为等长向量;(2)只要度量的梯度是可定义的且已定义,它就能够计算回归曲面的梯度。MGRNN解决了普通前馈网络常见的实际问题。