From big data to higher bureaucratic capacity: Poverty alleviation in China
成果类型:
Article
署名作者:
Zhu, Jiangnan; Xiao, Hanyu; Wu, Bin
署名单位:
University of Hong Kong; Education University of Hong Kong (EdUHK); Hunan University
刊物名称:
PUBLIC ADMINISTRATION
ISSN/ISSBN:
0033-3298
DOI:
10.1111/padm.12907
发表日期:
2024
页码:
61-78
关键词:
corruption
governance
POLICY
state
performance
CHALLENGES
GOVERNMENT
dibao
摘要:
This study explores how big data technologies can create an information commons shared by all policy stakeholders to alleviate the corruption and information asymmetries long endemic to poverty alleviation programs. We argue that the information commons can transform discrete data first into information with clear policy purposes and then into actionable knowledge. This process increases bureaucratic competence by improving policy accuracy and the efficiency of bureaucratic coordination and augments bureaucratic reliability by facilitating the investigation and prevention of corruption. We substantiate our propositions through extensive field interviews with officials and citizens in a Chinese province that is using China's first monitoring platform powered by big data technology to implement anti-poverty policies. Our study illustrates the importance of data-information-knowledge chains in improving governance.