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Improving self-organization of document collections by semantic mapping

机译:通过语义映射改善文档集合的自组织性

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In text management tasks, the dimensionality reduction becomes necessary to computation and interpretability of the results generated by machine learning algorithms. This paper describes a feature extraction method called semantic mapping. Semantic mapping, sparse random mapping and PCA are applied to self-organization of document collections using self-organizing map (SOM). The behaviors of the methods on projection of binary and tfidf document vector representations are compared. The classification error generated by SOM maps on text categorization of the K1 collection was used to compare the performance of the methods. Semantic mapping generated better document representation than sparse random mapping.
机译:在文本管理任务中,降维对于计算机学习算法生成的结果的计算和可解释性而言是必需的。本文介绍了一种称为语义映射的特征提取方法。语义映射,稀疏随机映射和PCA应用于使用自组织映射(SOM)进行文档集合的自组织。比较了该方法在二进制和tfidf文档向量表示的投影上的行为。 SOM映射根据K1集合的文本分类生成的分类错误用于比较方法的性能。语义映射比稀疏随机映射生成更好的文档表示。

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