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Pattern Classification Based on Self-organizing Feature Mapping Neural Network

机译:基于自组织特征映射神经网络的模式分类

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摘要

Traditional pattern classification methods are not always efficient because sample data sets are sometimes incomplete and there are exceptions and counter examples. In this paper, SOFM neural network is applied in pattern classification of two-dimensional vectors after analysis of its structure and algorithm. The method to establish SOFM network via MATLAB7.0 is introduced before the network is applied to classify two-dimensional vectors. The adjustment process of weight vectors together with classification performance of SOFM model are also tested in the condition of different number of training steps. The simulation results show that the classification approach based on SOFM model is effective because of its fast speed, high accuracy and strong generalization ability.
机译:传统的模式分类方法并不总是有效,因为样本数据集有时是不完整的,并且存在异常和计数器示例。本文在分析其结构与算法之后,SOFM神经网络应用于二维矢量的模式分类。在应用网络应用之前,引入了通过MATLAB7.0建立SOFM网络的方法来对二维向量进行分类。在不同数量的训练步骤的条件下也测试了重量载体的调节过程以及SOFM模型的分类性能。仿真结果表明,基于SOFM模型的分类方法是有效的,因为其快速,高精度和强大的泛化能力。

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