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Using rough sets to construct sense type decision trees for text categorization

机译:使用粗糙集构建文本分类的感测类型决策树

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Accurate text categorization is needed for efficient and effective text retrieval, search and filtering. Finding appropriate categories and manually assigning them to existing documents is very laborious. This paper shows a simple procedure for automatic extraction of atomic sense types (semantic categories) from documents based on rough sets. The atomic sense types are nodes of a sense type decision tree, which represents a taxonomy.
机译:有效且有效的文本检索,搜索和过滤需要准确的文本分类。找到适当的类别并手动将它们分配给现有文档非常费力。本文显示了一种简单的过程,用于从基于粗糙集的文档自动提取原子感测类型(语义类别)。原子检测类型是感测类型决策树的节点,其代表分类。

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