Month: November 2022
Thursday assorted links
A Big and Embarrassing Challenge to DSGE Models
Dynamic stochastic general equilibrium (DSGE) models are the leading models in macroeconomics. The earlier DSGE models were Real Business Cycle models and they were criticized by Keynesian economists like Solow, Summers and Krugman because of their non-Keynesian assumptions and conclusions but as DSGE models incorporated more and more Keynesian elements this critique began to lose its bite and many young macroeconomists began to feel that the old guard just weren’t up to the new techniques. Critiques of the assumptions remain but the typical answer has been to change assumption and incorporate more realistic institutions into the model. Thus, most new work today is done using a variant of this type of model by macroeconomists of all political stripes and schools.
Now along comes two statisticians, Daniel J. McDonald and the acerbic Cosma Rohilla Shalizi. McDonald and Shalizi subject the now standard Smet-Wouters DSGE model to some very basic statistical tests. First, they simulate the model and then ask how well can the model predict its own simulation? That is, when we know the true model of the economy how well can the DSGE discover the true parameters? [The authors suggest such tests haven’t been done before but that doesn’t seem correct, e.g. Table 1 here. Updated, AT] Not well at all.
If we take our estimated model and simulate several centuries of data from it, all in the stationary regime, and then re-estimate the model from the simulation, the results are disturbing. Forecasting error remains dismal and shrinks very slowly with the size of the data. Much the same is true of parameter estimates, with the important exception that many of the parameter estimates seem to be stuck around values which differ from the ones used to generate the data. These ill-behaved parameters include not just shock variances and autocorrelations, but also the “deep” ones whose presence is supposed to distinguish a micro-founded DSGE from mere time-series analysis or reduced-form regressions. All this happens in simulations where the model specification is correct, where the parameters are constant, and where the estimation can make use of centuries of stationary data, far more than will ever be available for the actual macroeconomy.
Now that is bad enough but I suppose one might argue that this is telling us something important about the world. Maybe the model is fine, it’s just a sad fact that we can’t uncover the true parameters even when we know the true model. Maybe but it gets worse. Much worse.
McDonald and Shalizi then swap variables and feed the model wages as if it were output and consumption as if it were wages and so forth. Now this should surely distort the model completely and produce nonsense. Right?
If we randomly re-label the macroeconomic time series and feed them into the DSGE, the results are no more comforting. Much of the time we get a model which predicts the (permuted) data better than the model predicts the unpermuted data. Even if one disdains forecasting as end in itself, it is hard to see how this is at all compatible with a model capturing something — anything — essential about the structure of the economy. Perhaps even more disturbing, many of the parameters of the model are essentially unchanged under permutation, including “deep” parameters supposedly representing tastes, technologies and institutions.
Oh boy. Imagine if you were trying to predict the motion of the planets but you accidentally substituted the mass of Jupiter for Venus and discovered that your model predicted better than the one fed the correct data. I have nothing against these models in principle and I will be interested in what the macroeconomists have to say, as this isn’t my field, but I can’t see any reason why this should happen in a good model. Embarrassing.
Addendum: Note that the statistical failure of the DSGE models does not imply that the reduced-form, toy models that say Paul Krugman favors are any better than DSGE in terms of “forecasting” or “predictions”–the two classes of models simply don’t compete on that level–but it does imply that the greater “rigor” of the DSGE models isn’t buying us anything and the rigor may be impeding understanding–rigor mortis as we used to say.
Addendum 2: Note that I said challenge. It goes without saying but I will say it anyway, the authors could have made mistakes. It should be easy to test these strategies in other DSGE models.
Against current conceptions of the equity-efficiency trade-off
I cited the current use of that trade-off as the thing that bugs me most about the economics profession. Here is my Bloomberg column, and here is one excerpt:
The equity-efficiency trade-off, in its simplest form, argues that economists should consider both equity (how a policy affects various interested parties) and efficiency (how well a policy targets the party it is intended to affect) in making policy judgments.
So far so good. I start getting nervous, however, when I see equity given special status. After all, it most often is called “the equity-efficiency trade-off,” not “an equity-efficiency tradeoff,” and it is prominent in mainstream economics textbooks. By simply reiterating a concept, economists are trying to elevate their preferred value over a number of alternatives. They are trying to make economics more pluralistic with respect to values, but in reality they are making it more provincial.
If you poll the American people on their most important values, you will get a diverse set of answers, depending on whom you ask and how the question is worded. Americans will cite values such as individualism, liberty, community, godliness, merit and, yes equity (as they should). Another answer — taking care of their elders, especially if they contributed to the nation in their earlier years — does not always show up in polls, but seems to have a grip on many national policies and people’s minds.
And:
I hear frequently about the equity-efficiency trade-off, but much less about the trade-offs between efficiency and these other values. Mainstream economists seldom debate the value trade-offs between efficiency and individualism, for instance, though such conflicts were of central concern to many Americans during the pandemic…
Surveys have shown that a strong majority of academic economists prefer Democrats. Yet most economists, including Democrats, should pay more attention to the values of ordinary Americans and less attention to the values of their own segment of the intelligentsia. That also would bring them closer to most Democratic Party voters, not to mention swing voters and many Republicans. Equity is just one value of many, and it is not self-evidently the value economists ought to be most concerned with elevating.
Damning throughout.
“What’s the best defense of the Biden administration’s performance to date?”
That is an MR reader request. You could read this longish NYT piece by Ezra Klein, but his broader perspectives are somewhat different from mine. My defense, no matter how good or bad it may be, is a little simpler:
1. Most other countries have inflation too. Our inflation rate is somewhat better than the Western average. Perhaps that difference is not to Biden’s credit, but he didn’t put us on the wrong side of that ledger either.
2. The American response to Russia’s war in Ukraine seems to have gone relatively well, all things considered? This judgment could end up rapidly reversed, but so far we have achieved a mix of embarrassing Russia while avoiding direct troop involvement or “no fly” zones.
3. China has not (yet) invaded Taiwan. Biden at least pretends to offer Taiwan stronger support than previous administrations had done.
4. #2 and #3 are perhaps 80% of the scorecard?
5. The Chips and Science Act at least puts some emphasis back on science, though so far it seems the proffered reforms aren’t nearly good enough.
Wednesday assorted links
1. Swedish Zoom reading group on classical liberal themes.
2. Monty Python Argument clinic, but with an app.
4. Legislation looks to stop insurers from rating/excluding coverage based on dog breed.
5. EU may block Polish nuclear investment.
6. Admission to a research university causally shapes your politics. But it is more about the peers than the instruction.
Redistribution and credit card debt
Is Chase Sapphire a Pareto improvement, or does it also involve redistribution? Here is a new paper on that topic:
We study credit card rewards as an ideal laboratory to quantify the cross-subsidy from naive to sophisticated consumers in retail financial markets. Using granular data on the near universe of credit card accounts in the United States, we find that sophisticated consumers profit from reward credit cards at the expense of naive consumers who lose money both in absolute terms and relative to classic cards. We estimate an aggregate annual cross-subsidy of $15.5 billion. Notably, our results are not driven by income—while sophisticated high-income consumers benefit the most, naive high-income consumers pay the most. Banks lure consumers into the use of reward cards by offering lower interest rates than on comparable classic cards and bank profits are highest for borrowers in the middle of the credit score distribution. We show that credit card rewards transfer wealth from less to more educated, from poorer to richer, from rural to urban, and from high to low minority areas, thereby widening existing spatial disparities.
The authors are Sumit Agarwal, Andrea Presbitero, André F. Silva, and Carlo Wix. I guess I am going to continue using my Sapphire card, are you?
Via Arpit Gupta.
Why talent sorting in Germany is flawed
I won’t double indent, but this is all from Simon Grimm:
-
German academia doesn’t have world-class universities and is self-avowedly egalitarian.
-
Without a clear top university, many talented students instead enter highly competitive medical schools to prove their ability.
-
But, as argued here, medical school is a bad default choice for these students if you care about accelerated scientific, material, and moral progress. This is for four reasons:
-
Entering many different universities instead of one top college, talented students do not generate and thus do not profit from local agglomeration effects.
-
Medical students aren’t allowed the intellectual flexibility to explore ideas and projects independently.
-
Medical school takes six years, offering no intermediate degree. This locks in students’ choice of study, even if they change their minds.
-
Lastly, practicing medicine offers small impact at the margin (i.e., talented medical students can’t add much to an already highly advanced medical system).
-
-
Instead, talented individuals could study subjects and enter jobs that allow them to do much more good.
-
Changing this status quo is difficult, as i) strong competition between universities is probably disliked by university administrations and ii) reforming existing universities is famously hard through entrenched bureaucratic decision-making and ensuing vetocracy. Thus, change might only be possible through affluent outsiders who launch a new, better university.
Elon’s current Twitter strategy
Not macro, but super-micro. Relative status is what gets people talking, and what is more relative status than “Blue Check” on Twitter. And so everyone is talking about Twitter over the last few days.
Duh.
Here is the latest pricing proposal:
Twitter’s current lords & peasants system for who has or doesn’t have a blue checkmark is bullshit.
Power to the people! Blue for $8/month.
— Elon Musk (@elonmusk) November 1, 2022
And adjusted for PPP. Read the whole thread, a lot of privileges will come with the status, and I suspect spam problems will de facto force most people into this option. See you there! And Elon is already ahead of the critics on this one, and was all along.
Tuesday assorted links
Chronic School Absenteeism
SFStandard: Chronic absenteeism in the San Francisco Unified School District has more than doubled from pre-pandemic levels, rising from 14% to 28%, according to preliminary data for 2021-22. A student is considered chronically absent when they miss 10% of the 180-day school year.
Chronic Absentism doubled for most students–chronic absenteeism among Asians, for example, doubled from 4% to 9%–but among African Americans chronic absenteeism increased from 38% to a stunning 64%. As a result, some schools with a large percentage of African American students have 80% or more of their student body chronically absent.

Further evidence on role models
Leveraging the Tennessee STAR class size experiment, we show that Black students randomly assigned to at least one Black teacher in grades K–3 are 9 percentage points (13 percent) more likely to graduate from high school and 6 percentage points (19 percent) more likely to enroll in college compared to their Black schoolmates who are not. Black teachers have no significant long-run effects on White students. Postsecondary education results are driven by two-year colleges and concentrated among disadvantaged males. North Carolina administrative data yield similar findings, and analyses of mechanisms suggest role model effects may be one potential channel.
That is from a new AER paper by Seth Gershenson, Cassandra M. D. Hart, Joshua Hyman, Constance A. Lindsay and Nicholas W. Papageorge, “The Long-Run Impacts of Same-Race Teachers.” Here are various ungated versions. Just to be clear, I don’t consider this a justification for any particular set of policies. I do see it as extra reason for the successful to be visible and to work hard!
Who are the best Ukraine predictors?
Here is a new reader request:
– Which kinds of people are likely to be best able to predict how events in Ukraine will unfold? Ukrainians? Political scientists? Superforecasters?
I have to go with the superforecasters, but that said, I wish for them to have the following training:
1. Have visited Ukraine and Russia, as many times as possible.
2. Have Ukrainian and Russian friends.
3. Well-read in Russian literature, and a sense of how imperialistic so many of the Russian intellectuals and writers have been.
4. Some understanding of how the KGB perspective in Russia differs from the views of the military, all as it might reflect upon Putin and his decisions.
5. Well-read in the general history of war, in addition to the history of the region.
I am not sure you want actual Ukrainians or Russians, who tend to be insightful but highly biased. It is noteworthy to me that Kamil Galeev, who has had a good predictive record, is from Russia but is a Tatar rather than an ethnic Russian or Ukrainian. I would downgrade anyone, as a forecaster, who took “too much” interest in the Russia/Trump issue. They might be too skewed toward understanding events in terms of U.S. domestic politics. Overall, would you do better taking Estonians or professional political scientists on this one? I am not so sure.