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http://dx.doi.org/10.14400/JDC.2019.17.4.095

An Analysis of Drawing Government Supporting Policies for Mutual Growth of Shippers and Ship owners using CFPR method  

Nam, Tae-Hyun (Graduate School of Logistics, Incheon National University)
Yeo, Gi-Tae (Graduate School of Logistics, Incheon National University)
Publication Information
Journal of Digital Convergence / v.17, no.4, 2019 , pp. 95-105 More about this Journal
Abstract
The failure of company management that does not overcome the recession of shipping economy has negative impact on front-end and back-end industries in relation to shipping industry overall. This study aims to derive a measure of government policy support for win-win of ship owners and shippers by performing a survey with experts in ship owners, shippers, and port-related institutions. This study employed a consistent fuzzy preference relation (CFPR) method to provide the priority of government policies. The study results showed that out of all 14 policies, the policy perceived most important was "expansion of participation in share of shipping company or ships of shipper (0.102)" followed by "strengthening of national shipper-centered service quality (0.101)", and "providing a long-term transportation contract model of container cargo (0.085)". To recover the Korean shipping industry via win-win of ship owners and shipper, the policy enforcement is important through correct government policy establishment and priority selection. In this regard, this study contributed to proposing policies and priority of the policies. For the future study, detailed analysis on comparison of perception difference among stakeholders in the shipping industry is needed.
Keywords
Shipping Industry; Ship Owners; Shippers; Policy Support Measure; CFPR;
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Times Cited By KSCI : 1  (Citation Analysis)
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