乌尔都语文本分类:使用机器学习技术的比较研究

Imran Rasheed, Vivek Gupta, H. Banka, C. Kumar
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引用次数: 16

摘要

在过去的10年里,在线内容已经进入了新闻相关机构不愿投资于线下运营的阶段,因为内容的分布存在过多的偏差。然而,非结构化或无序形式的数字数据的激增,特别是乌尔都语等语言,使获取信息变得更加容易。因此,本文探讨了乌尔都语新闻来源文本分类的特点。为此,利用WEKA(怀卡托环境知识分析)工具,对决策树(J48)、支持向量机(SVM)和k近邻(KNN)三种分类器在乌尔都语文本分类上的性能进行了测量。评估是在一个相对较大的乌尔都语文本集合中进行的,其中有超过16,678份文件,主要包括乌尔都语报纸《每日罗什尼》的新闻文章。此外,采用TF-IDF加权方案对数据进行特征选择和提取。与其他两种分类器相比,使用SVM分类器进行乌尔都语文本分类具有更好的准确性和更高的效率。本研究的数据集是按照TRC (Text Retrieval Conference)社区标准制定的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Urdu Text Classification: A comparative study using machine learning techniques
In the last decade, online content has entered a stage where news related organizations are reluctant to invest in offline operations due to excessive aberrations in content distributions. However, the proliferation of digital data in an unstructured or rather disordered form particularly for languages like Urdu has complicated the easy access to information. Consequently, the paper addresses the peculiarities of Urdu text classification of news origin. For this, the performance of the three classifiers such as Decision Tree (J48), Support Vector Machine (SVM) and k-nearest neighbor (KNN) was measured on the classification of Urdu text using WEKA (Waikato Environment Knowledge Analysis) tool. The assessment was carried out on a relatively large collection of Urdu text having over 16,678 documents containing mainly news articles from The Daily Roshni, an Urdu newspaper. Additionally, TF-IDF weighting scheme was used for feature selection and extraction of data. The Urdu text classification using SVM classifier performed quite better with promising accuracy and superior efficiency when compared to the other two classifiers. For this study, the dataset was formulated as per TRC (Text Retrieval Conference) community standard.
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