Abstract
In order to tell the story of digital technology enabling urban social risk collaborative prevention and control from an empirical point of view, this paper first systematically combs the digital changes, digital characteristics and digital practice of urban social risk collaborative prevention and control in China, and clarifies the realistic background of social risk collaborative prevention and control in digital enabling cities. Secondly, on the basis of literature review and review, this paper clarifies the theoretical logic and operation mechanism of social risk collaborative prevention and control in digital enabling cities, and constructs the analytical framework of "dynamic mechanism-initial conditions-collaborative process-accidental factors". Third, through the network crawler to obtain the research document data and the statistical yearbook collection data data, has selected 7 explanation elements, takes 26 provincial people's governments as the research object, uses the QCA fuzzy set qualitative comparative analysis method, carries on the inspection to the city social risk coordination prevention and control influence factor combination allocation. Fourth, three driving modes of urban social risk prevention and control are found, which are comprehensive development type, multi-factor driving type and high conversion ability type.
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