基于支持向量机的在线文本分类系统

A. Jumani, M. Mahar, F. H. Khoso, M. A. Memon
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引用次数: 7

摘要

文本分类是当今以故事、新闻等形式存在的大型文本的需要。同样,这个系统是随着支持向量机、神经网络和决策树等技术而形成的。故事、报纸都是属于文字分类的页面集合。各种信德语报纸定期出版,每日卡哇什语是其中之一。人们在阅读报纸时遇到了困难,因为没有任何具体的选项来分类与体育、技术、犯罪、时尚、时事相关的特定新闻。为此,本文提出了一个信德语文本分类系统(TCS)。使用了五个类,并扫描了单个类内的每个报纸页面。要预测有多少用户同时阅读报纸太难了,为此,我们测试了网页性能。此外,对于页面文本的分类,使用precision, recall和f-measure进行测量,对报纸页面文本进行分类的准确率达到67%。这对那些想要节省宝贵的读报纸时间的人来说是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Text Categorization System Using Support Vector Machine
Text Classification is a need of day, large text existing in the form of stories, news etc. Likewise, this system came into being along several techniques like, Support Vector Machine, Neural Networks and Decision Tree. Stories, newspapers are the page collection that belongs to text categorization. Various Sindhi newspapers are regularly published and Daily Kawish is one of them. People are facing difficulties during reading newspaper because there is no any specific option that will categorize particular news related to sports, technologies, crime, fashion and current affairs. For this purpose, a Text Categorization System (TCS) for Sindhi language is presented in this paper. Five classes are used and scanned each newspaper page inside a single class. It is too difficult to predict how many users will read newspaper simultaneously and for this, web performance is tested. Moreover, for the classification of the text from pages, precision, recall and f-measure are used to measure and achieved 67% of accuracy to classify the text from newspaper pages. It would be beneficial for those who want to save their precious time during reading newspaper.
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