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Why known unknowns may be better than knowns, and how that matters for the evolution of happiness

Abstract
Rayo and Becker (2007) model happiness as an imperfect measurement tool: It provides a partial ordering of alternative courses of actions. In this note, decisionmakers use their inability to rank two actions, to infer rankings of other pairs of actions. It is demonstrated that coarser happiness information actually increases the power of inference. As a result behavior is maximizing, not merely satisficing, almost independent of how coarse the happiness information is. Moreover, to support inference, evolution selects a happiness function with different properties than the one maximizing direct sensory information.
Publisher
University of Gothenburg
Other description
JEL: B52; D91; I31
URI
https://hdl.handle.net/2077/73999
Collections
  • Working papers
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829. Stennek Known Unkown.pdf (1.024Mb)
Date
2022-10
Author
Stennek, Johan
Keywords
Indirect evolutionary approach
utility function
Publication type
report
ISSN
1403-2465
Series/Report no.
Working Papers in Economics
829
Language
eng
Metadata
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