Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs
Basei M, Ferrari G, Rodosthenous N (2023) Center for Mathematical Economics Working Papers; 677.
Bielefeld: Center for Mathematical Economics.
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| Veröffentlicht | Englisch
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Autor*in
Basei, Matteo;
Ferrari, GiorgioUniBi;
Rodosthenous, Neofytos
Abstract / Bemerkung
The socioeconomic impact of pollution naturally comes with uncertainty due to, e.g.,
current new technological developments in emissions’ abatement or demographic changes. On top
of that, the trend of the future costs of the environmental damage is unknown: Will global warming
dominate or technological advancements prevail? The truth is that we do not know which scenario
will be realised and the scientific debate is still open. This paper captures those two layers of
uncertainty by developing a real-options-like model in which a decision maker aims at adopting a
once-and-for-all costly reduction in the current emissions rate, when the stochastic dynamics of the
socioeconomic costs of pollution are subject to Brownian shocks and the drift is an unobservable
random variable. By keeping track of the actual evolution of the costs, the decision maker is able
to learn the unknown drift and to form a posterior dynamic belief of its true value. The resulting
decision maker’s timing problem boils down to a truly two-dimensional optimal stopping problem
which we address via probabilistic free-boundary methods and a state-space transformation. We
show that the optimal timing for implementing the emissions reduction policy is the first time
that the learning process has become “decisive” enough; that is, when it exceeds a time-dependent
percentage. This is given in terms of an endogenously determined threshold uniquely solving a
nonlinear integral equation, which we can solve numerically. We discuss the implications of the
optimal policy and also perform comparative statics to understand the role of the relevant model’s
parameters in the optimal policy.
OR/MS subject classification: Environment: Pollution; Probability: Stochastic model ap- plications; Dynamic programming/optimal control: Applications, Markov, Models
OR/MS subject classification: Environment: Pollution; Probability: Stochastic model ap- plications; Dynamic programming/optimal control: Applications, Markov, Models
Stichworte
environmental policy;
partial observation;
real options;
optimal stopping;
free boundaries
Erscheinungsjahr
2023
Serientitel
Center for Mathematical Economics Working Papers
Band
677
Seite(n)
27
Urheberrecht / Lizenzen
ISSN
0931-6558
Page URI
https://pub.uni-bielefeld.de/record/2978674
Zitieren
Basei M, Ferrari G, Rodosthenous N. Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs. Center for Mathematical Economics Working Papers. Vol 677. Bielefeld: Center for Mathematical Economics; 2023.
Basei, M., Ferrari, G., & Rodosthenous, N. (2023). Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs (Center for Mathematical Economics Working Papers, 677). Bielefeld: Center for Mathematical Economics.
Basei, Matteo, Ferrari, Giorgio, and Rodosthenous, Neofytos. 2023. Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs. Vol. 677. Center for Mathematical Economics Working Papers. Bielefeld: Center for Mathematical Economics.
Basei, M., Ferrari, G., and Rodosthenous, N. (2023). Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs. Center for Mathematical Economics Working Papers, 677, Bielefeld: Center for Mathematical Economics.
Basei, M., Ferrari, G., & Rodosthenous, N., 2023. Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs, Center for Mathematical Economics Working Papers, no.677, Bielefeld: Center for Mathematical Economics.
M. Basei, G. Ferrari, and N. Rodosthenous, Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs, Center for Mathematical Economics Working Papers, vol. 677, Bielefeld: Center for Mathematical Economics, 2023.
Basei, M., Ferrari, G., Rodosthenous, N.: Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs. Center for Mathematical Economics Working Papers, 677. Center for Mathematical Economics, Bielefeld (2023).
Basei, Matteo, Ferrari, Giorgio, and Rodosthenous, Neofytos. Uncertainty over Uncertainty in Environmental Policy Adoption: Bayesian Learning of Unpredictable Socioeconomic Costs. Bielefeld: Center for Mathematical Economics, 2023. Center for Mathematical Economics Working Papers. 677.
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