State-space TBATS model for container freight rate forecasting with improved accuracy

Maritime Transport Research - Tập 3 - Trang 100057 - 2022
Ziaul Haque Munim1
1Faculty of Technology, Natural and Maritime Sciences, University of South-Eastern Norway - Campus Vestfold, Horten 3184, Norway

Tài liệu tham khảo

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