Central European Business Review Vol. 8 No. 4

Decomposition and Forecasting Time Series in Business Economy Using Prophet Forecasting Model

DOI: https://doi.org/10.18267/j.cebr.221

[plný text (PDF)]

Miroslav Navratil, Andrea Kolkova

N/A

JEL klasifikace: C53, M21

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