The Foundations of Behavioral Economic Analysis

Volume III: Behavioral Time Discounting

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OUP Oxford


Paru le : 2019-02-14



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Description
Taken from the first definitive introduction to behavioral economics, The Foundations of Behavioral Economic Analysis: Behavioral Time Discounting is an authoritative and cutting edge guide to this essential topic for advanced undergraduate and postgraduate students. It considers the evidence against the exponential discounted utility model and describes several behavioral models such as hyperbolic discounting, attribute based models, and the reference time theory. This updated extract from Dhami's leading textbook allows the reader to pursue subsections of this vast and rapidly growing field and to tailor their reading to their specific interests in behavioural economics.
Pages
150 pages
Collection
n.c
Parution
2019-02-14
Marque
OUP Oxford
EAN papier
9780192574657
EAN PDF
9780192574657

Informations sur l'ebook
Nombre pages copiables
0
Nombre pages imprimables
0
Taille du fichier
2755 Ko
Prix
19,27 €

Sanjit Dhami is Professor of Economics at the University of Leicester. He studied at the Delhi School of Economics and the University of Toronto for his Masters, MPhil, and PhD degrees in economics. He has previously taught at the Universities of Toronto, Essex, and Newcastle. His research has mainly focused on behavioral economic theory and its applications. He has published on the axiomatic foundations of the various components of prospect theory, behavioral political economy using other-regarding preferences, behavioral time preferences, foundations of behavioral game theory, and applications in tax evasion, stochastic dominance concepts under other-regarding preferences, and in behavioral law and economics.

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