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An Analysis of Constructed Categories for Textual Classification Using Fuzzy Similarity and Agglomerative Hierarchical Methods

机译:模糊相似性分层方法对文本分类构建类别的分析

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Ambiguity is a challenge faced by systems that handle natural language. To assuage the issue of linguistic ambiguities found in text classification, this work proposes a text categorizer using the methodology of Fuzzy Similarity. The grouping algorithms Stars and Cliques are adopted in the Agglomerative Hierarchical method and they identify the groups of texts by specifying some time of relationship rule to create categories based on the similarity analysis of the textual terms. The proposal is that based on the methodology suggested, categories can be created from the analysis of the degree of similarity of the texts to be classified, without needing to determine the number of initial categories. The combination of techniques proposed in the categorizer's phases brought satisfactory results, proving to be efficient in textual classification.
机译:歧义是处理自然语言的系统所面临的挑战。为了缓解文本分类中发现的语言模糊问题,这项工作提出了一种使用模糊相似性方法的文本分类程序。分组算法恒星和派系是在附名分层方法中采用的,并且通过指定一些关系规则来根据文本术语的相似性分析来创建类别的一段时间来识别文本组。该提案是基于建议的方法,可以从分析要分类的分析来创建类别,而无需确定初始类别的数量。在分类程序的阶段提出的技术组合带来了令人满意的结果,证明是在文本分类中有效。

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