Urdu News Content Classification Using Machine Learning Algorithms

Khawar Iqbal Malik
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引用次数: 1

Abstract

As the world has become a global village, the flow of news in terms of volume and speed increases. It is necessary to engage computing machines for assisting people in dealing with this massive data. The availability of different types of news and such material on the Internet serves as a source of information for billions of users. Millions of people in our subcontinent speak and understand Urdu. There are several classification techniques that are available and are applied to classify English news like political, Education, Medical, etc. Plenty of research work has been done in multiple languages but Urdu is still to be worked on due to a lack of resources. This research evaluates the performance of twelve (12) different Machine learning classifiers for the Urdu News text Classification problem. The analysis was performed on a relatively big and recent collection of Urdu text that contains over 0.15 million (153,050) labeled instances of eight different classes. In addition, after applying pre-processing techniques, the TF-IDF weighting technique was adopted for feature selection and data extraction. After evaluating various machine learning methods, the SVM outperforms the other eleven algorithms with an accuracy of 91.37 %. We also compare its results with other classifiers like linear SVM, Logistic regression, SGD, Naïve bays, ridge regression, and a few others.
乌尔都语新闻内容分类使用机器学习算法
随着世界成为一个地球村,新闻的流量在数量和速度上都在增加。有必要使用计算机器来帮助人们处理这些海量数据。互联网上不同类型的新闻和此类材料的可用性为数十亿用户提供了信息来源。在我们的次大陆上,数百万人说并理解乌尔都语。有几种可用的分类技术可用于对英语新闻进行分类,如政治、教育、医学等。大量的研究工作已经在多种语言中完成,但由于缺乏资源,乌尔都语仍有待研究。本研究评估了12种不同的机器学习分类器在乌尔都语新闻文本分类问题上的性能。该分析是在一个相对较大且最近的乌尔都语文本集合上进行的,该集合包含超过15万个(153,050个)八个不同类别的标记实例。此外,在应用预处理技术后,采用TF-IDF加权技术进行特征选择和数据提取。在对各种机器学习方法进行评估后,SVM以91.37%的准确率优于其他11种算法。我们还将其结果与其他分类器(如线性支持向量机,逻辑回归,SGD, Naïve海湾,山脊回归等)进行比较。
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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