Authorship Attribution of Web Texts with Korean Language Applying Deep Learning Method

C. Park, In-Ho Jang, Zoon-Ky Lee
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引用次数: 0

Abstract

According to rapid development of technology, web text is growing explosively and attracting many fields as substitution for survey. The user of Facebook is reaching up to 113 million people per month, Twitter is used in various institution or company as a behavioral analysis tool. However, many research has focused on meaning of the text itself. And there is a lack of study for text's creation subject. Therefore, this research consists of sex/age text classification with by using 20,187 Facebook users’ posts that reveal the sex and age of the writer. This research utilized Convolution Neural Networks, a type of deep learning algorithms which came into the spotlight as a recent image classifier in web text analyzing. The following result assured with 92% of accuracy for possibility as a text classifier. Also, this research was minimizing the Korean morpheme analysis and it was conducted using a Korean web text to Authorship Attribution. Based on these feature, this study can develop users' multiple capacity such as web text management information resource for worker, non-grammatical analyzing system for researchers. Thus, this study proposes a new method for web text analysis.
基于深度学习方法的韩语网络文本作者归属研究
随着科技的飞速发展,网络文本正以爆炸式的速度增长,并吸引了许多替代调查的领域。Facebook的用户每月达到1.13亿人,Twitter被各种机构或公司用作行为分析工具。然而,许多研究都集中在文本本身的意义上。而对文本创作主体的研究则较为缺乏。因此,本研究通过使用20,187个Facebook用户的帖子来揭示作者的性别和年龄,包括性别/年龄文本分类。卷积神经网络是一种深度学习算法,近年来作为一种图像分类器在网络文本分析中备受关注。下面的结果保证了作为文本分类器的可能性有92%的准确性。此外,本研究尽量减少韩语语素分析,并使用韩语网络文本进行作者归属。基于这些特点,本研究可以开发面向工作人员的网络文本管理信息资源、面向研究人员的非语法分析系统等用户的多重能力。因此,本研究提出了一种新的网络文本分析方法。
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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