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New Technology of Library and Information Service  2002, Vol. 18 Issue (2): 75-78    DOI: 10.11925/infotech.1003-3513.2002.02.25
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An Innovative Designing of Logistics in the Pattern of B2B2C
Wu Zhongxia1   Wu Zhongxia2
1(Department of Information Management, Nanjing University, Nanjing 210093, China)
2(Nanjing Architecture Engineering School, Nanjing 210009, China)
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In this paper, through the discussion and comparison of the current running pattern of E-commerce, the author has found the defects and shortcomings delimited within the mentioned pattern, therefore suggest the necessity of building logistical delivery system which is based on the shared network resources and supported by information technology, finally, the author has made an effort to configure a solutive logistical delivery design in the pattern of B2B2C, and the construction of the resources concerning the customers.

Key wordsE-commerce      The third party      Logistics delivery system      Supply chain      Customer-oriented value chain      Customer resources     
Received: 08 April 2001      Published: 25 April 2002


Corresponding Authors: Wu Zhongxia,Wu Zhongxia   
About author:: Wu Zhongxia,Wu Zhongxia

Cite this article:

Wu Zhongxia,Wu Zhongxia. An Innovative Designing of Logistics in the Pattern of B2B2C. New Technology of Library and Information Service, 2002, 18(2): 75-78.

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