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A Fully Automated Pattern Classification Method of Combining Self-Organizing Map with Generalization Regression Neural Network

机译:一种全自动模式分类方法,将自组织地图与泛化回归神经网络相结合

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The paper presents a new automated pattern classification method. At first original data points are partitioned by unsupervised self-organizing map network (SOM). Then from the above clustering results, some labelled points nearer to each clustering center are chosen to train supervised generalization regression neural network model (GRNN). Then utilizing the decided GRNN model, we reclassify these original data points and gain new clustering results. At last from new clustering results, we choose some labelled points nearer to new clustering center to train and classify again, and so repeat until clustering center no longer changes. Experimental results for Iris data, Wine data and remote sensing data verify the validity of our method.
机译:本文提出了一种新的自动模式分类方法。在第一个原始数据点,由无监督的自组织地图网络进行划分(SOM)。然后从上述聚类结果中,选择越近每个聚类中心的标记点以训练监督泛化回归神经网络模型(GRNN)。然后利用决定的GRNN模型,我们重新分类了这些原始数据点并获得了新的聚类结果。最后从新的聚类结果中选择了越来越多的标记点,以便再次培训和分类,因此重复,直到聚类中心不再更改。虹膜数据,葡萄酒数据和遥感数据的实验结果验证了我们方法的有效性。

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