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Clustering Ensemble Model Based on Self-Organizing Map Network

机译:基于自组织地图网络的聚类集合模型

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This paper proposes a clustering ensemble method that introduces cascade structure into the self-organizing map (SOM) to solve the problem of the poor performance of a single clusterer. Cascaded SOM is an extension of classical SOM combined with the cascaded structure. The method combines the outputs of multiple SOM networks in a cascaded manner using them as an input to another SOM network. It also utilizes the characteristic of high-dimensional data insensitivity to changes in the values of a small number of dimensions to achieve the effect of ignoring part of the SOM network error output. Since the initial parameters of the SOM network and the sample training order are randomly generated, the model does not need to provide different training samples for each SOM network to generate a differentiated SOM clusterer. After testing on several classical datasets, the experimental results show that the model can effectively improve the accuracy of pattern recognition by 4%~10%.
机译:本文提出了一种集群集群方法,将级联结构引入自组织地图(SOM),以解决单个集群的性能不佳的问题。级联SOM是与级联结构相结合的古典SOM的延伸。该方法将多个SOM网络的输出以级联方式使用它们作为另一个SOM网络的输入。它还利用了高维数据不敏感性的特性,以少量维度的值变化,以实现忽略部分的索马尔网络误差输出的效果。由于SOM网络和样本训练顺序的初始参数随机生成,因此该模型不需要为每个SOM网络提供不同的训练样本以生成差异化的SOM集群器。在几种经典数据集进行测试之后,实验结果表明,该模型可以有效地提高图案识别的准确性4%〜10%。

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