使用GHSOM和sammon投影的文档集群可视化混合方法

P. Butka, J. Pócsová
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引用次数: 3

摘要

本文提出了一种基于增长层次自组织映射算法的层次聚类方法与Sammon投影相结合的文档集可视化混合方法。基于自组织地图的算法提供了鲁棒的聚类方法,适合于将大量文档可视化到基于网格的二维地图中。Sammon投影是一种非线性投影方法,主要适用于基于投影的地图(通常是二维地图)上较小目标集的可视化。在这里,我们实现并测试了这些方法的组合,其中使用GHSOM将起始文档集组织为类似文档的子集,然后在聚类阶段结束时,使用较少数量的输入,创建Sammon映射,以便为这些聚类中的文档提供区别。采用基于信息增益分析的特征项提取方法对聚类进行描述。使用现有的JBOWL库实现混合算法。为了测试的目的,使用了英文文件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid approach for visualization of documents clusters using GHSOM and sammon projection
This paper presents the hybrid approach for visualization of documents sets by the combination of hierarchical clustering method, based on the Growing Hierarchical Self-Organizing Maps algorithm, and Sammon projection. Algorithms based on the self-organizing maps provide robust clustering method suitable for visualization of larger number of documents into the grid-based 2D maps. Sammon projection is nonlinear projection method suitable mostly to visualization of smaller sets of object on (usually 2D) maps based on the projections. Here we have implemented and tested combination of these approaches, where starting set of documents is organized using GHSOM to subsets of similar documents, then for clusters at the end of clustering phase, with smaller number of inputs, Sammon maps are created in order to provide distinction also for documents in these clusters. The method for extraction of characteristic terms based on the information gain analysis was used for description of clusters. Existing library JBOWL was used for implementation of the hybrid algorithm. For testing purposes, the documents in English language were used.
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