United They Stand : Findings from an Escalation Prediction Competition

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VESCO, Paola, Håvard HEGRE, Michael COLARESI, Remco Bastiaan JANSEN, Adeline LO, Gregor REISCH, Nils B. WEIDMANN, 2022. United They Stand : Findings from an Escalation Prediction Competition. In: International Interactions. Taylor & Francis. 48(4), pp. 860-896. ISSN 0305-0629. eISSN 1547-7444. Available under: doi: 10.1080/03050629.2022.2029856

@article{Vesco2022-07-04Unite-57014, title={United They Stand : Findings from an Escalation Prediction Competition}, year={2022}, doi={10.1080/03050629.2022.2029856}, number={4}, volume={48}, issn={0305-0629}, journal={International Interactions}, pages={860--896}, author={Vesco, Paola and Hegre, Håvard and Colaresi, Michael and Jansen, Remco Bastiaan and Lo, Adeline and Reisch, Gregor and Weidmann, Nils B.} }

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