Andrew Caplin
Affiliations: | Economics | New York University, New York, NY, United States |
Area:
FinanceGoogle:
"Andrew Caplin"Children
Sign in to add traineeJingyang Zhou | research assistant | NYU (Neurotree) | |
Andrei M. Gomberg | grad student | 2000 | NYU |
Trivikraman Thampy | grad student | 2008 | NYU |
Santhanagopalan Vasudev | grad student | 2008 | NYU |
Jonathan Halket | grad student | 2009 | NYU |
Sen Geng | grad student | 2011 | NYU |
Steven Laufer | grad student | 2012 | NYU |
Stefan F. Bucher | grad student | 2015-2021 | NYU GSAS (Neurotree) |
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Publications
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Ameriks J, Briggs JS, Caplin A, et al. (2020) Older Americans Would Work Longer If Jobs Were Flexible American Economic Journal: Macroeconomics. 12: 174-209 |
Ameriks J, Briggs JS, Caplin A, et al. (2020) Long-Term-Care Utility and Late-in-Life Saving Journal of Political Economy. 128: 2375-2451 |
Caplin A, Leahy J. (2020) Comparative statics in markets for indivisible goods Journal of Mathematical Economics. 90: 80-94 |
Caplin A, Ghandehari M, Lim C, et al. (2019) Advancing environmental exposure assessment science to benefit society. Nature Communications. 10: 1236 |
Caplin A, Csaba D, Leahy J, et al. (2018) Rational Inattention, Competitive Supply, and Psychometrics National Bureau of Economic Research |
Caplin A, Dean M, Leahy J. (2018) Rational Inattention, Optimal Consideration Sets, and Stochastic Choice The Review of Economic Studies. 86: 1061-1094 |
Ameriks J, Briggs J, Caplin A, et al. (2016) The Long-Term-Care Insurance Puzzle: Modeling and Measurement National Bureau of Economic Research |
Caplin A. (2016) Measuring and Modeling Attention Annual Review of Economics. 8: 379-403 |
Caplin A, Martin D. (2016) The dual-process drift diffusion model: Evidence from response times Economic Inquiry. 54: 1274-1282 |
Azmak O, Bayer H, Caplin A, et al. (2015) Using Big Data to Understand the Human Condition: The Kavli HUMAN Project. Big Data. 3: 173-188 |