社交媒体中情绪紧张的季节性建模

IF 2.6 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Alexey Nosov, Y. Kuznetsova, M. Stankevich, I. Smirnov, Oleg Grigoriev
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引用次数: 0

摘要

社交媒体几乎已成为研究社会进程的无限资源。季节性是一种对许多生理和心理状态产生重大影响的现象。对技术、社会和人文科学而言,建立集体情绪季节变化模型是一项具有挑战性的任务。这是由于获取足够数量的数据、处理和评估这些数据以及展示结果既费力又复杂。与此同时,了解集体情绪的年度动态可为我们提供有关集体行为的重要见解,尤其是在各种危机或灾难中。在我们的研究中,我们提出了一种基于社交媒体文本识别和评估情绪紧张季节性涨落迹象的方法。分析基于 VKontakte 社交网络社区中的俄语评论,这些评论专门报道俄罗斯下诺夫哥罗德地区一个小镇的城市新闻和事件。工作流程步骤包括:采用统计方法对数据进行分类;进行探索性分析以确定共同模式;进行数据聚合以建立季节性变化模型;通过聚类确定典型数据属性;以及制定和验证季节性标准。季节性建模的结果表明,日历季节模型与数据相对应,情绪紧张的动态变化与季节相关。所提出的方法适用于广泛的社会实践问题,如监测舆论或评估群众情绪的不规则变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Seasonality of Emotional Tension in Social Media
Social media has become an almost unlimited resource for studying social processes. Seasonality is a phenomenon that significantly affects many physical and mental states. Modeling collective emotional seasonal changes is a challenging task for the technical, social, and humanities sciences. This is due to the laboriousness and complexity of obtaining a sufficient amount of data, processing and evaluating them, and presenting the results. At the same time, understanding the annual dynamics of collective sentiment provides us with important insights into collective behavior, especially in various crises or disasters. In our study, we propose a scheme for identifying and evaluating signs of the seasonal rise and fall of emotional tension based on social media texts. The analysis is based on Russian-language comments in VKontakte social network communities devoted to city news and the events of a small town in the Nizhny Novgorod region, Russia. Workflow steps include a statistical method for categorizing data, exploratory analysis to identify common patterns, data aggregation for modeling seasonal changes, the identification of typical data properties through clustering, and the formulation and validation of seasonality criteria. As a result of seasonality modeling, it is shown that the calendar seasonal model corresponds to the data, and the dynamics of emotional tension correlate with the seasons. The proposed methodology is useful for a wide range of social practice issues, such as monitoring public opinion or assessing irregular shifts in mass emotions.
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来源期刊
Computers
Computers COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.40
自引率
3.60%
发文量
153
审稿时长
11 weeks
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