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№ 2016/3

Forecasting methods and models


YURYK Yaryna Ivanivna1, KUZMENKO G. 2

1Institute for Economics and Forecasting, NAS of Ukraine
2Alior Bank S.A., Poland

Creating a scoring model to assess risk events on the labor market

Ekon. prognozuvannâ 2016; 3:107-118https://doi.org/10.15407/eip2016.03.107


ABSTRACT ▼


JEL: C25, Е24, E27

Article in Ukrainian (pp. 107 - 118) DownloadDownloads :1067

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