Forecasting: theory and practice

International Journal of Forecasting - Tập 38 Số 3 - Trang 705-871 - 2022
Fotios Petropoulos1, Daniele Apiletti2, Vassilios Assimakopoulos3, M. Zied Babaï4, Devon K. Barrow5, Souhaib Ben Taieb6, Christoph Bergmeir7, Ricardo Bessa8, Jakub Bijak9, John E. Boylan10, Jethro Browell11, Claudio Carnevale12, Jennifer L. Castle13, Pasquale Cirillo14, Michael P. Clements15, Clara Cordeiro16,17, Fernando Luiz Cyrino Oliveira18, Shari De Baets19, Alexander Dokumentov20, Joanne Ellison9, Piotr Fiszeder, Philip Hans Franses, David T. Frazier, Michael Gilliland15, M. Sinan Gönül, Paul Goodwin, Luigi Grossi, Yael Grushka‐Cockayne, Mariangela Guidolin, Massimo Guidolin, Ulrich Gunter, Xiaojia Guo, Renato Guseo, Nigel Harvey, David F. Hendry, Ross Hollyman, Tim Januschowski, Jooyoung Jeon, Victor Richmond R. Jose, Yanfei Kang, Anne B. Koehler, Stephan Kolassa, Nikolaos Kourentzes, Sonia Leva, Feng Li9, Konstantia Litsiou, Spyros Makridakis, Gael M. Martin, Andrew B. Martinez, Sheik Meeran, Theodore Modis, Κωνσταντίνος Νικολόπουλος, Dilek Önkal, Alessia Paccagnini, Anastasios Panagiotelis, Ioannis P. Panapakidis, José M. Pavía, Manuela Pedio, Diego J. Pedregal, Pierre Pinson, Patrícia Ramos, David E. Rapach, J. James Reade, Bahman Rostami-Tabar, Michał Rubaszek, Georgios Sermpinis, Han Lin Shang, Evangelos Spiliotis, Aris Syntetos, Priyanga Dilini Talagala, Thiyanga S. Talagala, Len Tashman, Dimitrios D. Thomakos, Thordis L. Thorarinsdottir, E. Todini, Juan R. Trapero, Xiaoqian Wang, Robert L. Winkler, Alisa Yusupova, Florian Ziel
1School of Management, University of Bath, UK
2Politecnico di Torino, Turin, Italy
3Forecasting and Strategy Unit, School of Electrical and Computer Engineering, National Technical University of Athens, Greece
4KEDGE Business School, France
5Department of Management, Birmingham Business School, University of Birmingham, UK
6Big Data and Machine Learning Lab, Université de Mons (UMONS), Belgium
7Faculty of Information Technology, Monash University, Melbourne, Australia
8INESC TEC: Institute for Systems and Computer Engineering, Technology and Science, Porto, Portugal
9Department of Social Statistics and Demography, University of Southampton, UK
10Centre for Marketing Analytics and Forecasting, Lancaster University Management School, Lancaster University, UK
11School of Mathematics and Statistics, University of Glasgow, UK
12Department of Mechanical and Industrial Engineering, University of Brescia, Italy
13Magdalen College, University of Oxford, UK
14ZHAW School of Management and Law, Zurich University of Applied Sciences, Switzerland
15ICMA Centre, Henley Business School, University of Reading, UK
16CEAUL, Faculdade de Ciências, Universidade de Lisboa, Portugal
17Faculdade de Ciências e Tecnologia, Universidade do Algarve, Portugal
18Pontifical Catholic University of Rio de Janeiro, (PUC-Rio), Brazil
19Department of Business Informatics and Operations Management, Faculty of Economics and Business Administration, Universiteit Gent, Belgium
20Let’s Forecast, Australia

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