REVIEW OF METHODS FOR DETERMINING THE TONATION OF TEXTS IN NATURAL LANGUAGES

K. Nursakitov, A. Bekishev, S. Kumargazhanova, A. Urkumbaeva
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Abstract

The analysis of sentiment in user comments finds application in many areas, such as evaluating the quality of goods and services, analyzing emotions in messages, and detecting phishing advertisements. There are numerous methods for analyzing the sentiment of textual data in the Russian language, but automatic sentiment analysis of Russian-language texts is much less developed than for other major world languages. This article is part of a broader study on the creation of an information system for detecting dangerous content in the cyberspace of Kazakhstan. The purpose of this article is to provide an analytical review of the different approaches to sentiment analysis of Russian-language texts and to compare modern methods for solving the problem of text classification. Additionally, the article seeks to identify development trends in this area and select the best algorithms for use in further research. The review covers different methods for text data preprocessing, vectorization, and machine classification for sentiment analysis of texts, and it concludes with an analysis of existing databases on this topic. The article identifies some of the main unresolved problems in sentiment analysis of Russianlanguage texts and discusses planned further research. 
自然语言文本语调测定方法综述
用户评论中的情绪分析在许多领域都有应用,例如评估商品和服务的质量,分析消息中的情绪,以及检测网络钓鱼广告。俄语文本数据的情感分析方法有很多,但俄语文本的情感自动分析远不及世界上其他主要语言。本文是一项更广泛研究的一部分,该研究旨在建立一个信息系统,以检测哈萨克斯坦网络空间中的危险内容。本文的目的是对俄语文本情感分析的不同方法进行分析综述,并对解决文本分类问题的现代方法进行比较。此外,本文试图确定该领域的发展趋势,并选择在进一步研究中使用的最佳算法。本文涵盖了文本数据预处理、向量化和文本情感分析的机器分类的不同方法,并以对该主题的现有数据库的分析作为结论。文章指出了俄语文本情感分析中尚未解决的一些主要问题,并讨论了进一步的研究计划。
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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