A Temporal Variable-Scale Clustering Method on Feature Identification for Policy Public-Opinion Management

IF 3.3 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Informatica Pub Date : 2024-04-26 DOI:10.15388/24-infor554
Ai Wang, Xuedong Gao, Mincong Tang
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引用次数: 0

Abstract

The development of various digital social network platforms has caused public opinion to play an increasingly important role in the policy making process. However, due to the fact that public opinion hotspots usually change rapidly (such as the phenomenon of public opinion inversion), both the behaviour feature and demand feature of netizens included in the public opinion often vary over time. Therefore, this paper focuses on the feature identification problem of public opinion simultaneously considering the multiple observation time intervals and key time points, in order to support the management of policy-focused online public opinion. According to the variable-scale data analysis theory, the temporal scale space model is established to describe candidate temporal observation scales, which are organized following the time points of relevant policy promulgation (policy time points). After proposing the multi-scale temporal data model, a temporal variable-scale clustering method (T-VSC) is put forward. Compared to the traditional numerical variable-scale clustering method, the proposed T-VSC enables to combine the subjective attention of decision-makers and objective timeliness of public opinion data together during the scale transformation process. The case study collects 48552 raw public opinion data on the double-reduction education policy from Sina Weibo platform during Jan 2023 to Nov 2023. Experimental results indicate that the proposed T-VSC method could divide netizens that participate in the dissemination of policy-focused public opinion into clusters with low behavioural granularity deviation on the satisfied observation time scales, and identify the differentiated demand feature of each netizen cluster at policy time points, which could be applied to build the timely and efficient digital public dialogue mechanism. PDF  XML
用于政策民意管理的特征识别时变尺度聚类方法
各种数字社交网络平台的发展使得民意在政策制定过程中扮演着越来越重要的角色。然而,由于舆情热点通常变化较快(如舆情倒挂现象),舆情所包含的网民行为特征和需求特征往往都会随时间的变化而变化。因此,本文重点研究同时考虑多个观测时间区间和关键时间点的舆情特征识别问题,以期为政策聚焦型网络舆情管理提供支持。根据变尺度数据分析理论,建立时间尺度空间模型来描述候选的时间观测尺度,并按照相关政策颁布的时间点(政策时间点)来组织观测尺度。在提出多尺度时空数据模型后,又提出了时空变尺度聚类方法(T-VSC)。与传统的数值变尺度聚类方法相比,T-VSC 方法在尺度转换过程中能够将决策者的主观关注度和舆情数据的客观时效性结合在一起。案例研究从新浪微博平台收集了 2023 年 1 月至 2023 年 11 月期间有关教育双减政策的 48552 条原始舆情数据。实验结果表明,所提出的T-VSC方法能够在满足观测的时间尺度上将参与政策焦点舆情传播的网民划分为行为粒度偏差较小的集群,并识别出各网民集群在政策时间点上的差异化需求特征,可用于构建及时高效的数字公共对话机制。PDF  XML
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来源期刊
Informatica
Informatica 工程技术-计算机:信息系统
CiteScore
5.90
自引率
6.90%
发文量
19
审稿时长
12 months
期刊介绍: The quarterly journal Informatica provides an international forum for high-quality original research and publishes papers on mathematical simulation and optimization, recognition and control, programming theory and systems, automation systems and elements. Informatica provides a multidisciplinary forum for scientists and engineers involved in research and design including experts who implement and manage information systems applications.
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