LISS 2012 pp 267-272 | Cite as

Analysis and Prediction of Logistics Enterprise Competitiveness by Using a Real GA-Based Support Vector Machine

Conference paper


This research is aimed at establishing the forecast and analysis diagnosis models for competitiveness of logistics enterprise through integrating a real-valued genetic algorithm to determine the optimum parameters and SVM to perform learning and classification on data. The result of the proposed GA-SVM can satisfy a predicted accuracy of up to 95.56% for all the tested logistics enterprise competitive data. Notably, there are only 12 influential feature included in the proposed model, while the six features are ordinary and easily accessible from National Bureau of Statistics. The proposed GA-SVM is available for objective description forecast and evaluation of a logistics enterprise competitiveness and stability of steady development.


SVM Logistics enterprise competitiveness GA Forecast 


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Copyright information

© Springer-Verlag Berlin Heidelberg 2013

Authors and Affiliations

  1. 1.School of Human and DevelopmentChina Agriculture UniversityBeijingP.R. China
  2. 2.School of Economics and ManagementBeijing Jiaotong UniversityBeijingP.R. China

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