Testing preference formation in learning design contingent valuation (LDCV) using advanced information and repetitive treatments
Abstract
Policymakers have largely replaced Single Bounded Discrete Choice (SBDC) valuation by the
more statistically efficient repetitive methods; Double Bounded Discrete Choice (DBDC) and
Discrete Choice Experiments (DCE). Repetitive valuation permits classification into rational
preferences: (i) a-priori well-formed; (ii) consistent non-arbitrary values “discovered” through repetition and experience; (Plott, 1996; List 2003) and irrational preferences; (iii) consistent but arbitrary values as “shaped” by preceding bid level (Tufano, 2010; Ariely et al., 2003) and (iv) inconsistent and arbitrary values. Policy valuations should demonstrate behaviorally rational preferences. We outline novel methods for testing this in DBDC applied to renewable energy premiums in Chile.
Other description
JEL: D03, Q40, Q51
Collections
View/ Open
Date
2015-04Author
Aravena, Claudia
Hutchinson, W. George
Carlsson, Fredrik
Matthews, David I.
Keywords
Contingent valuation
double bounded discrete choice
repetitive learning
advanced information learning
bid dependency
theories of preference formation
Publication type
report
ISSN
1403-2465
Series/Report no.
Working Papers in Economics
619
Language
eng