A Study on the Relationship between Public Derivative Big Data and Industrial Policymaking: Taking Bike Sharing as an Example

Author:

Song Huilin1ORCID

Affiliation:

1. School of International Economics and Trade, Jiangxi University of Finance and Economics, Nanchang 330013, China

Abstract

Smart government is an important part of the smart world. The use of big data analysis technology can effectively improve the government’s ability of fine management. Taking China’s bike-sharing industry as the research object, we study the relationship between public-derived big data and industrial policy. First, a feature-enhanced short text clustering method is proposed to perform topic clustering on publicly derived big data. Second, keyword extraction based on word frequency is used to quantify the text of industrial policy. Finally, time is taken as the main line to analyze the co-occurrence of clustering topics and keywords. The results show that (1) the feature enhancement method we proposed can effectively improve the clustering effect. (2) There is a great correlation between the industrial policy and the information mined by Weibo, but there is an obvious lag. Rational use of public-derived big data will effectively help the industrial policy to be released in a better and faster way.

Funder

Education Department of Jiangxi Province

Publisher

Hindawi Limited

Subject

Computer Science Applications,Software

Reference22 articles.

1. Analyzing public generated big data and restructuring government decision making process: review and prospect;N. Zhang;Chinese Public Administration,2015

2. The interactive policy agenda-setting model in China’s Internet incidents: an empirical study on events concerning social justice;B. Yu;Journal of Nanjing Normal University (Social Science Edition),2013

3. We-media agenda setting: a new path to formation of public policy;Z. Deng;Journal of Public Management,2016

4. Big data analysis of public derivatives and reconstruction of government decision-making process: theoretical evolution and research prospects;N. Zhang;Chinese Public Administration,2015

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