基于线性支持向量机的在线新闻提取和多类分类

Apoorva Gupta, Smriti Arora, Niyati Baliyan
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引用次数: 0

摘要

在线新闻文章、博客、网站是各种文本数据的丰富来源。然而,这些数据源中包含的数据无法手工提取、记录和列出,因为它们的大小非常大。在这个时代,将精确的新闻准确地归入相应的类别是一项挑战。随着时间的推移,当每个预定义类的训练文档都很容易出现时,已经提出了几种用于新闻分类的方法,但是这些方法都是在小数据集上进行尝试和测试的。在基础研究中,目标是提出一种可以在存在成千上万个实例时使用的方法。本研究分析涉及使用多类分类器OneVsRest和OneVsOne分类器在线性支持向量分类上进行新闻分类的任务,以学习多类新闻分类的性能。本研究中提出的方法“基于关键字的分类技术(KBCT)”使用Python执行和总结,并使用谷歌协作实验室部署。结果使用来自uci-news-aggregator数据集的422419个实例的多元数据集上的四个不同的新闻类来表示。计算出OneVsRestClassifier的准确率为95.76%,比onevsonecclassifier的准确率95.67%高出0.09%。将提出的原型与一些相关的研究和算法进行比较,发现OneVsRest模型产生的结果在准确性方面是最优的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online News Extraction and Multiclass Classification Using Linear Support Vector Machines
Online news articles, blogs, sites are a rich source of diverse text-based data. However, the data contained in these sources cannot be manually extricated, recorded, and listed because it comes in colossal size. Accurate mapping of precise news into their corresponding category is challenging in these times. Several methods have been proposed over time for news classification when training documents for each predefined class are present readily, however such methods were tried and tested upon a small dataset. With the underlying research, the aim is to propose a method that can be used when lakhs and lakhs of instances are present. This research analysis involves the task of news classification using multiclass classifiers - OneVsRest and OneVsOne classifiers over the Linear Support Vector Classification to learn the performance of multiclass news categorization. The proposed methodology “Keyword Based Classification Technique (KBCT)” in this study was executed and concluded using Python and deployed using Google Colaboratory. The result was expressed using four distinguished news classes over a multivariate dataset of 422419 instances from the uci-news-aggregator dataset. The OneVsRestClassifier's accuracy was computed to be 95.76% that was 0.09% more than the OneVsOneClassifier's accuracy of 95.67%. The proposed prototype was compared with some of the related studies and algorithms, and the outcomes produced by the OneVsRest model were the most optimum in terms of accuracy.
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