Tough enough? Robust satisficing as a decision norm for long-term policy analysis

Synthese 200 (1):1-26 (2022)
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Abstract

This paper aims to open a dialogue between philosophers working in decision theory and operations researchers and engineers working on decision-making under deep uncertainty. Specifically, we assess the recommendation to follow a norm of robust satisficing when making decisions under deep uncertainty in the context of decision analyses that rely on the tools of Robust Decision-Making developed by Robert Lempert and colleagues at RAND. We discuss two challenges for robust satisficing: whether the norm might derive its plausibility from an implicit appeal to probabilistic representations of uncertainty of the kind that deep uncertainty is supposed to preclude; and whether there is adequate justification for adopting a satisficing norm, as opposed to an optimizing norm that is sensitive to considerations of robustness. We discuss decision-theoretic and voting-theoretic motivations for robust satisficing, and use these motivations to select among candidate formulations of the robust satisficing norm.

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manuscript Mogensen, Andreas; Thorstad, David (manuscript) "Tough enough? Robust satisficing as a decision norm for long-term policy analysis".

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Author Profiles

Andreas Mogensen
Oxford University
David Thorstad
Vanderbilt University

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