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Model Design and Implementation of Enterprise Credit Information Based On Data Mining

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Item Summary

Title: Model Design and Implementation of Enterprise Credit Information Based On Data Mining
Authors: Xu, Qingyuan
Xu, Qingyue
Keywords: Smart city
Dishonest to enforcement risk
Dishonest enterprise to enforcement
Logit regression
risk
Issue Date: 04 Jan 2017
Abstract: Smart city construction emphasizes building an effective whole social credit system, promoting the construction of government integrity, business integrity, social integrity and public confidence in the judiciary. For credit risk has become an important assessment. Meanwhile, administration credit system is one of three major data. It proposes unified credit discipline and warning regulatory purposes, led by the government and its main functions, taken governmental data as the main basis. Accordingly, the paper constructs Corporate Dishonest Credit Executed (CDCE) Risk Assessment Model, based on governmental data. The model uses a set of urban enterprise data, selecting the explanatory variables from five aspects, administrative punishment, innovation, credit information, credit situation, and social responsibility, to screen CDCE Logit regression, to filter out and find out those variables which are significantly predicted effects for CDCE risk. And then construct a Logit regression model with the above selected variables. The experimental results and comparison of practical applications in China, we found that the model promises to higher business risk identification accuracy for CDCE. The model has a higher applied value and developmental prospects.
Pages/Duration: 8 pages
URI/DOI: http://hdl.handle.net/10125/41294
ISBN: 978-0-9981331-0-2
DOI: 10.24251/HICSS.2017.141
Rights: Attribution-NonCommercial-NoDerivatives 4.0 International
Appears in Collections:Decision Support for Smart City and Digital Services Minitrack



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