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一种特征压缩及分类神经网络的研究
引用本文:江铭虎,季文铎.一种特征压缩及分类神经网络的研究[J].电路与系统学报,1997,2(3):18-23.
作者姓名:江铭虎  季文铎
作者单位:北方交通大学信息科学研究所
摘    要:由于多对多类问题的高维数据无法直接观察其聚类和分布特性,本文采用神经网络法实现自适应主元特征提取(APEX),以压缩特征空间的维数,并保持足够的信息来鉴别事物之间的类型,它可有效地提取信号的主要特征和抑制噪声,我们将高维数据压缩影射到2或3维,从而实现特征数据的可视性分析,显示物体对象间的类似程度和关系结构,并采用高阶函数的神经网络对其进行了非线性分类,同时与BP网络的非线性分类能力进行了实验比较

关 键 词:主元提取  高阶函数  神经网络  模式识别

Research of A Feature Compression and Classification Neural Network
Abstract::Because the high-demension feature data of multiclasses problem are unable to be directly observed by their classes and distribution characterisitics,the paper achieves the Adaptive Principal Component Extraction (APEX) by using neural networks to compress the feature size and keep enough imformation to distinguish different classes.It can effective extract principal features of the signal and repress the noise. When the high demension feature data are mapped to 2 or 3 demensions, feature classes can be observed and analyzed directly and thus the relation among the feature data can be shown.A high-rank function neural network(HRFNN)is used to non-linear classification of the feature data. The non-linear classification abiltiy of the HRFNN and BP network is compared and experiment results show that the HRFNN has stronger classification ability and faster training speed.
Keywords::Principal cimponet extraction  High-rank function  Neural network  
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