Catastrophic thresholds, Bayesian learning and the robustness of climate policy recommendations
Year of publication: |
November 2017
|
---|---|
Authors: | Chang, Wonjun ; Rutherford, Thomas F. |
Published in: |
Climate change economics. - Hackensack, NJ [u.a.] : World Scientific Publ., ISSN 2010-0078, ZDB-ID 2572319-4. - Vol. 8.2017, 4, p. 1-23
|
Subject: | Uncertainty effect | stochastic programming | act-then-learn | integrated assessment models | climate tipping | economics of climate change | Bayesian learning | Klimawandel | Climate change | Klimaschutz | Climate protection | Lernprozess | Learning process | Bayes-Statistik | Bayesian inference | Theorie | Theory | Stochastischer Prozess | Stochastic process | Entscheidung unter Unsicherheit | Decision under uncertainty | Risiko | Risk | Umweltpolitik | Environmental policy | Modellierung | Scientific modelling |
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