SARIMA damp trend grey forecasting model for airline industry

Journal of Air Transport Management - Tập 82 - Trang 101736 - 2020
Rafael Bernardo Carmona-Benítez1, María Rosa Nieto1
1School of Business and Economics, Universidad Anáhuac México, Huixquilucan, 52786, Estado de México, Mexico

Tài liệu tham khảo

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