Different similarity measures for text classification using KNN

M. A. Wajeed, T. Adilakshmi
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引用次数: 13

Abstract

Present days humans are associated with many electronic gadgets which generate large amount of data on regular basis. The sole purpose of generated data was to meet the immediate needs and no attempt in organizing the data for later efficient retrieval was attempted. Over the period of time, the data generated became voluminous, this paper attempts to classify the huge data into different categories for easy retrieval. We have many techniques to classify the data which exists in the structured format, but not much work has been addressed when the data is available in textual form. In the present paper an attempt to classify the textual data based on its content is explored. The paper explores the process of building multi-classifier model for textual data. In the process of designing the model the K-Nearest Neighbour paradigm was employed, which has given encouraging results. The paper also attempts to explore different similarity measures, different feature selection techniques in the process of designing textual multi-classification.
基于KNN的文本分类的不同相似度度量
如今,人类与许多电子产品联系在一起,这些电子产品会定期产生大量的数据。生成数据的唯一目的是满足眼前的需要,没有尝试组织数据以便以后有效地检索。随着时间的推移,产生的数据变得非常庞大,本文试图将这些庞大的数据分成不同的类别,以便于检索。我们有很多技术来对结构化格式的数据进行分类,但是当数据以文本形式提供时,我们没有做太多的工作。本文对基于文本内容的文本数据分类进行了探索。本文探讨了文本数据多分类器模型的建立过程。在模型的设计过程中,采用了k近邻范式,并取得了令人鼓舞的结果。本文还对文本多分类设计过程中不同的相似度度量、不同的特征选择技术进行了探讨。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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