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№ 2015/2

Forecasting methods and models


MOKLIAK Maksym 1, CHERNOV P. 2, VDOVYCHENKO A. 3, ZUBRITSKYI A. 4

1Department of Coordination and Monitoring, State Fiscal Service of Ukraine
2Department of Coordination and Monitoring, State Fiscal Service of Ukraine
3 Research Institute of Financial Law (Irpin’)
4 Research Institute of Financial Law (Irpin’)

Spatial approach in forecasting tax revenues

Ekon. prognozuvannâ 2015; 2:7-20https://doi.org/10.15407/eip2015.02.007


ABSTRACT ▼


JEL: C530, H20

Article in Ukrainian (pp. 7 - 20) DownloadDownloads :828

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