Categorization of News Articles: A Model Based on Discriminative Term Extraction Method

Abhishek Sanwaliya, K. Shanker, S. Misra
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引用次数: 4

Abstract

Abstract—, Categorization techniques have major contribution in building automated system capable to fulfill the needs of decision making tasks for better organization and management of resources. The objective of this research is to assess the relative performance of some well-known classification methods. Among the proposed approaches our discriminative term extraction (DTE) based combined naïve bayes and K-NN (NB-KNN) approach has the advantages of short learning time due to its computational efficiency with comparatively high accuracy. We designed DTE based NB-KNN model for multi-class, single label text categorization. Our experiments suggest that data characteristics have considerable impact on the performance of classification methods. The Results obtained from Reuters-21578 corpus shows that NB-KNN consistently outperforms the single naïve bayes and K-NN classifiers on Precision, Recall and F1 scores. The results of the study suggest designing a classification system in which several classification methods can be combined to increase the reliability, consistency and accuracy of the categorization.
新闻文章分类:基于判别词提取方法的模型
摘要分类技术在构建能够满足决策任务需要的自动化系统以更好地组织和管理资源方面有着重要的贡献。本研究的目的是评估一些知名分类方法的相对性能。在提出的方法中,基于naïve贝叶斯和K-NN (NB-KNN)相结合的判别式项提取(DTE)方法具有学习时间短、准确率较高的优点。我们设计了基于DTE的NB-KNN模型用于多类、单标签文本分类。我们的实验表明,数据特征对分类方法的性能有相当大的影响。从Reuters-21578语料库获得的结果表明,NB-KNN在精度、召回率和F1分数上始终优于单一naïve贝叶斯和K-NN分类器。研究结果建议设计一种多种分类方法相结合的分类系统,以提高分类的可靠性、一致性和准确性。
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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