Your blogger will be back in the New Year.
Meanwhile, Happy Holidays to all!
Two more exciting econometrics webinars have recently burst on the scene:
Climate Econometrics: Just what it sounds like -- the interface of climate science and econometrics
AMLEDS: "Applied Machine Learning, Economics, and Data Science". So far mostly the interface of machine learning and econometrics.
Too soon to make any awards, but stay tuned for next year!
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To recap, the last few posts have featured, in no particular order:
Society for Financial Econometrics online seminar
Now let's do the wonderful Society for Financial Econometrics online seminar. It's a tie!
The first winner is
I'm sure you've been anxiously awaiting my (first annual?) "Best of 2020" econometrics retrospective! Let's do "best new webinars". I'll list my top webinars in this and forthcoming posts (in no particular order) and select a "best talk" from each. Of course they're filled with great talks -- that's why they're my favorite webinars -- quite apart from my personal selection for best talk.
Let's start with the Federal Reserve Bank of San Francisco's rock-solid Virtual Seminar on Climate Economics.
And the winner is:
Solomon Hsiang (Berkeley),
for
"Valuing the Global Mortality Consequences of Climate Change"!
Congrats to Sol and his 16 coauthors (yes, 16!) for producing a truly breathtaking global empirical analysis, blending massive observational data and climate model simulations to help inform a pressing issue of global importance. Check out the paper and video.
ABSTRACT This paper develops the first globally comprehensive and empirically grounded estimates of mortality risk due to future temperature increases caused by climate change. Using 40 countries' subnational data, we estimate age-specific mortality-temperature relationships that enable both extrapolation to countries without data and projection into future years while accounting for adaptation. We uncover a U-shaped relationship where extreme cold and hot temperatures increase mortality rates, especially for the elderly, that is flattened by both higher incomes and adaptation to local climate (e.g., robust heating systems in cold climates and cooling systems in hot climates). Further, we develop a revealed preference approach to recover unobserved adaptation costs. We combine these components with 33 high-resolution climate simulations that together capture scientific uncertainty about the degree of future temperature change. Under a high emissions scenario, we estimate the mean increase in mortality risk is valued at roughly 3.2% of global GDP in 2100, with today's cold locations benefiting and damages being especially large in today's poor and/or hot locations. Finally, we estimate that the release of an additional ton of CO2 today will cause mean [interquartile range] damages of $36.6 [-$7.8, $73.0] under a high emissions scenario and $17.1 [-$24.7, $53.6] under a moderate scenario, using a 2% discount rate that is justified by US Treasury rates over the last two decades. Globally, these empirically grounded estimates substantially exceed the previous literature's estimates that lacked similar empirical grounding, suggesting that revision of the estimated economic damage from climate change is warranted.
Here is the class of 2020. What a stellar group! (My reaction to almost every new fellow is : How could s/he not ALREADY be a fellow?) For more IAAE info (webinars, conferences, etc.) check https://appliedeconometrics.org/.
Greetings from the American Geophysical Union annual meeting, virtually of course. Climate science is starting to use machine learning (ML) to find good auxiliary models for indirect inference estimation of structural climate models. (Never mind that climate science has never heard of indirect inference!) The use of ML to obtain sophisticated auxiliary models parallels the recent beautiful structural econometric work of Kaji, Manresa, and Pouliot. A nice Manresa seminar video with discussion is here.