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№ 2019/3

Forecasting methods and models


DEBUNOV Leonid 1

1Oles Honchar Dnipro National University

Modeling company's financial sustainability with the use of artificial neural networks

Ekon. prognozuvannâ 2019; 3:101-123https://doi.org/10.15407/eip2019.03.101


ABSTRACT ▼


JEL: C45

Article in Ukrainian (pp. 101 - 123) DownloadDownloads :1215

REFERENCES ▼

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