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Climate Change: Impacts and Opportunities for Adaptation

Paper Session

Friday, Jan. 4, 2019 8:00 AM - 10:00 AM

Atlanta Marriott Marquis, International 6
Hosted By: American Economic Association
  • Chair: Antonio M. Bento, University of Southern California

Heat and Learning

Joshua Goodman
,
Harvard University
Michael Hurwitz
,
Harvard University
Jisung Park
,
University of California-Los Angeles
Jonathan Smith
,
Georgia State University

Abstract

We provide the first evidence that cumulative heat exposure inhibits cognitive skill development and that school air conditioning can mitigate this effect. Student fixed effects models using 10 million PSAT-takers show that hotter school days in the year prior to the test reduce learning, with extreme heat being particularly damaging and larger effects for low income and minority students. Weekend and summer heat has little impact and the effect is not explained by pollution or local economic shocks, suggesting heat directly reduces instructional time productivity. New data providing the first measures of school-level air conditioning penetration across the US suggest such infrastructure almost entirely offsets these effects. Without air conditioning, each 1°F increase in school year temperature reduces the amount learned that year by one percent. Our estimates imply that climate change could have economically meaningful effects on the human capital stock of nations.

Expectations and Adaptation to Environmental Risks

Jeffrey Shrader
,
Columbia University

Abstract

Despite the role that adaptation plays in determining climate change outcomes, little is known about the total adaptation potential of climate-exposed industries or the economy. Moreover, much of what is known comes from analysis of ex post adaptation to experienced weather rather than ex ante adjustments made in expectation of climate change. This paper introduces a method for estimating the value of forward-looking adaptation based on changes in expectations about the weather. The method uses changes in professional forecasts, conditional on weather realizations, to shock the beliefs of firms about future climate. The effect of those shocks on firm revenue identifies the value of forward-looking adaptation behaviors by the firm. The weather realizations, conditional on forecasts, identify direct effects of weather net of adaptation. Together, these values provide an estimate of the total effect of climate on firm welfare.
I apply the method to a novel dataset of El Niño/Southern Oscillation (ENSO) forecasts and highly disaggregated, firm-level production data to estimate adaptation by North Pacific albacore harvesters to ENSO-driven climate variation. In applying the method, I also derive theoretical conditions under which public forecasts provide good measures of private beliefs held by firms. The results show that firms are able to mitigate more than 75% of the total effect of ENSO through adaptation. Detailed data allows for exploration of mechanisms, showing that harvesters primarily adapt by choosing when to enter the fishery each season. The results illustrate both the importance of ENSO to firm welfare in this industry as well as the centrality of forward-looking adaptation to fully understanding economic consequences of changes in the climate.

A New Approach to Measuring Climate Change Impacts and Adaptation

Antonio M. Bento
,
University of Southern California
Edson Severnini
,
Carnegie Mellon University
Mehreen Mookerjee
,
Jindal Global University

Abstract

We propose a novel approach to estimate climate impacts and adaptation based on a decomposition of meteorological variables into long-run trends and deviations from them (weather shocks). Our estimating equation simultaneously exploits weather variation to identify the impact of shocks, and climatic variation to identify the effect of longer-run observed changes. We compare the simultaneously estimated short-and long-run effects to test for the presence and magnitude of adaptation. We apply our approach to the impact of climate change on air quality, estimating the climate penalty on ozone. Leveraging ambient ozone regulations, we find evidence of regulation-induced and residual adaptation.

Learning, Adaptation and Climate Uncertainty: Evidence from Indian Agriculture

Namrata Kala
,
Massachusetts Institute of Technology

Abstract

The profitability of many agricultural decisions depends on farmers’ abilities to predict the weather. Since climate change implies (possibly unknown) changes in the weather distribution, understanding how farmers form predictions is essential to estimating adaptation to climate change. I study how farmers learn about a weather-dependent decision, the optimal planting time, using rainfall signals. The agricultural decision I study, the timing of planting, contains information about household expectations about the monsoon, and is an economically crucial decision for farmers: a one-standard deviation from the optimal planting time in a given year can cause up to 12% lower profits in the data I use.
To capture the potential uncertainty caused by climate change, I develop an empirical framework that estimates, and finds support for, a general robust learning model in which farmers believe that the rainfall signals are drawn from a member of a set of rainfall distributions. Importantly, my empirical framework allows me to contrast the goodness-of-fit of my model to the more standard, Bayesian learning environments, and test which model fits farmers’ behavior best. Methodologically, the empirical framework I develop is quite general (and not tied to my application per se) and can be employed to test across learning models in other environments with unlearnable uncertainty.
The belief that the rainfall signals are drawn from a set of rainfall distributions rather than a single distribution are especially pronounced in villages that have experienced recent changes in rainfall distributions. This indicates that farmers respond to greater (Knightian) uncertainty in their environment by modifying their predictions to be robust to such uncertainty.
Discussant(s)
Joshua Graff Zivin
,
University of California-San Diego
Ivan Rudik
,
Cornell University
Amir Jina
,
University of Chicago
Derek Lemoine
,
University of Arizona
JEL Classifications
  • Q5 - Environmental Economics
  • I0 - General