基于词级数据增强的并行CNN孟加拉语新闻标签多类分类

Ruhul Amin, Nabila Sabrin Sworna, Nahid Hossain
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引用次数: 6

摘要

文本挖掘是对大量无组织文本数据进行挖掘的过程。由于通过网络博客、报纸和其他媒体可以获得大量的文本数据,文本分类和分类是当今的热门话题。关于英语和其他西方语言的这个话题已经做了很多研究。然而,对孟加拉语的研究却很少。孟加拉语数据集不可用是开发高性能文本分类工具的另一个负担。在本文中,我们提出了一种孟加拉语新闻标签分类方法。该分类完全基于新闻标题,仅使用并行卷积神经网络(CNN)进行分类。并行卷积神经网络是一种利用词级数据增强方法的深度神经网络。由于缺乏适当且更新的孟加拉语新闻标题和标签数据集,我们通过废弃在线报纸开发了自己的数据集,该数据集由88,968个新闻标题和标签组成。根据分类结果,我们的方法的准确率为93.47%,在同类作品中是最高的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiclass Classification for Bangla News Tags with Parallel CNN Using Word Level Data Augmentation
Text mining is the procedure of exploring large unorganized text data. Due to the availability of numerous amounts of text data through online blogs, newspapers and other media, text classification and categorization is the hot topic nowadays. Many researches have been done on this topic on English and other western languages. However, very few notable researches have been on Bangla language. Unavailability of a notable dataset in Bangla language is another burden to develop a highperformance text classification tool. In this paper, we have presented a Bangla news tags classification approach. The classification has been done entirely based on news titles only with parallel Convolutional Neural Network (CNN) which is a category of deep neural networks utilizing word-level data augmentation approach. Due to the unavailability of a proper and updated dataset on Bangla news titles and tags, we have developed our own dataset which consists of 88,968 news titles and tags by scrapping online newspapers. According to the classification result, our approach shows an accuracy of 93.47% which is the highest amongst the similar works.
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