Adaptive learning schemes for the modified probabilistic neural network

A. Zaknich, C.J.S. de Silva
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引用次数: 4

Abstract

The modified probabilistic neural network was initially derived from Specht's (1990) probabilistic neural network classifier and developed for nonlinear time series analysis. It can be described as a vector quantised reduced form of Specht's general regression neural network. It is typically trained with a known set of representative data pairs. This is quite satisfactory for stationary data statistics, but for the nonstationary case it is necessary to be able to adapt the network during operation. This paper describes adaptive learning schemes for the modified probabilistic neural network for both stationary and nonstationary data statistics. A nonlinear control problem is used to illustrate and compare the network's learning ability with that of the general regression and radial basis function neural networks.
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改进概率神经网络的自适应学习方案
修正概率神经网络最初来源于Specht(1990)的概率神经网络分类器,是为非线性时间序列分析而发展起来的。它可以被描述为Specht广义回归神经网络的矢量量化简化形式。它通常使用一组已知的代表性数据对进行训练。对于平稳的数据统计,这是相当令人满意的,但对于非平稳的情况,必须能够适应网络的运行。本文描述了修正概率神经网络在平稳和非平稳数据统计中的自适应学习方案。用一个非线性控制问题来说明和比较该网络与一般回归和径向基函数神经网络的学习能力。
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