Detection of extremist messages in web resources in the Kazakh language

Q2 Arts and Humanities
M. Bolatbek, Shynar Mussiraliyeva
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引用次数: 0

Abstract

Abstract Currently, the Internet information and communication network has become an integral part of human life. People use social networks such as Twitter, VKontakte, Facebook, etc., to establish global contacts, exchange opinions, gain knowledge, etc. The active participation of not only individual users, but also information organizations in the entire world space makes it necessary to develop measures that correspond to modern trends in the development of information and communication technologies to ensure national security, in particular, the organization of events related to countering the strengthening of ideas of extremism and terrorism. Countering the spread of aggressive information on the global network is an urgent problem of society and government agencies, this task is solved by filtering unwanted Internet resources. However, terrorist and extremist groups rationally use web technologies to perform various functions, including information dissemination, propaganda, fundraising and extremist missions. In such a situation, the Internet poses a threat to national security. In this paper, we investigate the issue of creating semantic analysis models to identify extremist messages in the Kazakh language. For the study, a proprietary text corpus was assembled and models based on bigrams and word input methods were proposed. According to the results of experiments, the proposed model shows the highest indicators for evaluating machine learning methods.
检测哈萨克语网络资源中的极端主义信息
当前,互联网信息通信网络已经成为人类生活中不可或缺的一部分。人们使用社交网络,如Twitter, VKontakte, Facebook等,建立全球联系,交换意见,获取知识等。不仅是个人用户的积极参与,而且整个世界空间的信息组织的积极参与,使得有必要制定符合信息和通信技术发展的现代趋势的措施,以确保国家安全,特别是组织与加强极端主义和恐怖主义思想有关的活动。抵制攻击性信息在全球网络上的传播是社会和政府机构的一个紧迫问题,这个任务是通过过滤不需要的互联网资源来解决的。然而,恐怖组织和极端组织合理地利用网络技术履行各种功能,包括信息传播、宣传、筹资和极端主义任务。在这种情况下,互联网对国家安全构成了威胁。在本文中,我们研究了创建语义分析模型来识别哈萨克语中的极端主义信息的问题。为此,构建了一个专有的文本语料库,并提出了基于双语义和词输入法的模型。实验结果表明,该模型是评价机器学习方法的最高指标。
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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来源期刊
Lodz Papers in Pragmatics
Lodz Papers in Pragmatics Arts and Humanities-Language and Linguistics
CiteScore
1.10
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0.00%
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