从议程设置角度看预测网上请愿成功的特征工程

IF 7.8 1区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE Government Information Quarterly Pub Date : 2024-05-13 DOI:10.1016/j.giq.2024.101937
Philip Tin Yun Lee , Alvin Ying Lu , Feiyu E , Michael Chau
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引用次数: 0

摘要

议题扩展模型和象征主义都是公共政策和议程设置文献中颇具影响力的概念,本研究利用这两个概念生成文本特征,以开发在线请愿成功预测模型。我们使用了一个在线请愿平台的真实数据集,结果表明,与基准模型相比,所提出的模型在几个重要的评估指标上表现良好。这项研究做出了多项贡献。首先,我们介绍了如何将这些概念转化为计算机可以理解的请愿书文本特征,从而提高请愿书成功率的预测。所开发的预测模型和所识别的网络请愿模式增强了我们对网络请愿平台上集体行动的理解。此外,我们还证明,通过同时采用监督和非监督的模型开发方法以及网络请愿平台的外生数据集,我们可以开发出更好的预测模型。今后对预测模型的进一步研究将有助于我们系统地定义模糊概念。就实际意义而言,我们提出的文本挖掘模型能让决策者以相对客观的方式处理大量的社会数据。这有利于公民参与电子民主。该模型可帮助政策制定者识别潜在的热门话题,并在早期阶段防止话题扩大,从而降低可能产生的社会成本。此外,通过基于我们的方法开发预测模型,公民可以对不同的请愿文本进行比较,以确定它们的成功几率,并发布预测成功率较高的文本。
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Feature engineering from the perspective of agenda setting for predicting the success of online petitions

This study draws on the issue expansion model and symbolism, both of which are influential concepts in the literature of public policy and agenda setting, to generate textual features for developing a predictive model of online petition success. Using a real-life dataset of an online petition platform, we show that the proposed model performs well in several important evaluation metrics when compared with benchmark models. This study offers several contributions. First, we present how to translate these concepts into textual features of petitions that can be understood by computers to improve prediction of petition success. The predictive models developed and the patterns of online petitioning identified enhance our understanding of collective actions on online petition platforms. In addition, we demonstrate that we can develop a better predictive model by adopting both supervised and unsupervised approaches of model development together with datasets that are exogenous from online petition platforms. Further examination of the predictive models in future may enable us to define vague concepts in a systematic way. On practical implications, our proposed text-mining model enables policy makers to handle a large volume of social data in a relatively objective manner. This is conducive to civic participation in e-democracy. The model may help policy makers identify potentially popular issues and prevent issue expansion at an early stage to mitigate the possible incursion of social cost. Moreover, by developing a predictive model based on our approach, citizens can compare different petition texts to determine their chances of success and post texts that have a higher predicted rate of success.

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来源期刊
Government Information Quarterly
Government Information Quarterly INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
15.70
自引率
16.70%
发文量
106
期刊介绍: Government Information Quarterly (GIQ) delves into the convergence of policy, information technology, government, and the public. It explores the impact of policies on government information flows, the role of technology in innovative government services, and the dynamic between citizens and governing bodies in the digital age. GIQ serves as a premier journal, disseminating high-quality research and insights that bridge the realms of policy, information technology, government, and public engagement.
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