Government responsive selectivity and public limited mediation role in air pollution governance: Evidence from large scale text data content mining

Bo Wang, Shuling Xu, Kaining Sun, Xiqiang Chang, Zhaohua Wang*, Wenhui Zhao

*Corresponding author for this work

    Research output: Contribution to journalArticlepeer-review

    11 Citations (Scopus)

    Abstract

    Social media has been widely discussed as an informal way for the public to present their environmental appeals. However, evidence on whether and how the government's decision-making will take the public in the non-Western electoral system under consideration remains limited. In this study, we extracted 9.25 million haze-related posts from Sina Weibo and analyzed the topics using the latent Dirichlet allocation topic model. Furthermore, we provide evidence of the Chinese governments’ responsiveness and the role of online public participation in environmental governance. The results show that the Chinese government responds to the public, both online and offline. Specifically, when online public appeal increases by 1%, the local government's posts on social media increase by 0.347%, and investment and regulations increase by 0.0676% and 0.074%, respectively, in the next phase. However, there are selective characteristics of government response: the local government is more concerned about its “political achievements” than undertaking “governance responsibility.” Furthermore, online public participation plays a minor role in the implementation of regulations.

    Original languageEnglish
    Article number106553
    JournalResources, Conservation and Recycling
    Volume187
    DOIs
    Publication statusPublished - Dec 2022

    Keywords

    • Environmental governance
    • Local government response
    • Non-western electoral system
    • Online public appeals
    • Social media

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