操纵性媒体话语的参数化:自动诊断的可能性和问题

IF 0.7 3区 文学 0 HUMANITIES, MULTIDISCIPLINARY
Maigul Shakenova, Dybys Tashimkhanova, Gulvira Shaikova, Ulzhan Ospanova, Olga Popovich
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引用次数: 0

摘要

定量测量和自动处理问题是确定媒体文本操纵潜力标记的一个重要问题,因为语言指标是机器参数化的基础。本研究的目的是分析媒体话语操纵性主要语言参数的可能性,这些参数可以通过机器学习来确定。为实现研究目标,使用了以下方法:系统、内容分析、计算机建模和比较。文章的研究结果确定,动词从句语气的使用、大写字母、"不 "的高频率使用、标点符号、疑问句或具有修辞性质的感叹句、为反讽目的而使用引号、双重否定句、"不 "的使用以及号召行动的言语结构等语言指标可作为计算机分类参数。为了达到上述目的,我们使用了PYTHON软件,该软件允许以算法和词汇的方式对文本进行分析和可视化。此外,通过整合 "PYTHON "工具,还可以使用语言转换标记,在分析文本中形成语言模式。用于诊断操纵性文本的参数清单并非详尽无遗,这强调了对大众媒体话语中的操纵性成分进行机器测量的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameterization of manipulative media discourse: possibilities and problems of automatic diagnosis
The issue of quantitative measurement and automatic processing is a significant problem in determining the markers of the manipulative potential of media texts, since linguistic indicators are the basis of machine parameterization. The purpose of the research is to analyse the possibilities of the main language parameters of the manipulativeness of media discourse, which can be identified using machine learning. To achieve the research goals, the following methods were used: system, content analysis, computer modelling, and comparative. The results of the article determined that such language indicators as use of the subjunctive mood of verbs, capital letters, high frequency of use of the ‘not’ particle, punctuation marks, questions, or exclamations of a rhetorical nature, use of quotation marks for the purpose of irony, double negative sentences, use of the word ‘no’, and verbal structures calling to action act as computer classification parameters. In order to cover the above purpose, PYTHON software was implemented that allowed texts to be analysed and visualized in algorithmic and lexical-vocabulary ways. In addition, it was determined that by integrating the PYTHON tool, it became possible to use language transformation markers that formed linguistic patterns in the analysed text. The list of parameters for diagnosing manipulative texts is non-exhaustive, which emphasizes the possibility of machine measurement of the manipulative component of mass media discourse.
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来源期刊
CiteScore
1.80
自引率
25.00%
发文量
78
期刊介绍: DSH or Digital Scholarship in the Humanities is an international, peer reviewed journal which publishes original contributions on all aspects of digital scholarship in the Humanities including, but not limited to, the field of what is currently called the Digital Humanities. Long and short papers report on theoretical, methodological, experimental, and applied research and include results of research projects, descriptions and evaluations of tools, techniques, and methodologies, and reports on work in progress. DSH also publishes reviews of books and resources. Digital Scholarship in the Humanities was previously known as Literary and Linguistic Computing.
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