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NTIS 바로가기Sustainability, v.11 no.1, 2019년, pp.64 -
Kim, Kyoung-jae , Lee, Kichun , Ahn, Hyunchul
Measuring and managing the financial sustainability of the borrowers is crucial to financial institutions for their risk management. As a result, building an effective corporate financial distress prediction model has been an important research topic for a long time. Recently, researchers are exerti...
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