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Research on Text Clustering Algorithm Based on K_means and SOM

机译:基于Kmeans和Son的文本聚类算法研究

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摘要

Text clustering is one of the difficult and hot research fields in the internet search engine research. Combination the advantages of K-means clustering and Self-Organizing Model (SOM) techniques, a new text clustering algorithm is presented. Firstly, texts are preprocessed to satisfy succeed process. Then, the paper analyzes common K-means clustering algorithm and SOM algorithm and combines them to overcome efficiency of low stability of K-means algorithm which is very sensitive to the initial cluster center and the isolated point text. The experimental results indicate that the improved algorithm has a higher accuracy and has a better stability, compared with the original algorithm.
机译:文本聚类是互联网搜索引擎研究中的困难和热门研究领域之一。介绍了K-Means聚类和自组织模型(SOM)技术的组合,提出了一种新的文本聚类算法。首先,文本被预处理以满足成功的过程。然后,该论文分析了普通的K-Means聚类算法和SOM算法,并结合了它们来克服K-Mean算法的低稳定性的效率,这对初始群集中心和孤立的点文本非常敏感。实验结果表明,与原始算法相比,改进的算法具有更高的精度并具有更好的稳定性。

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