10/29-30 1980: 26% 34% 31% 8%
10/7/1984 : 43% 34% 16% 9%
10/10-12/1984 64% 12% 21% 52%
10/10-13 1996 62% 17% 14% 45%
A recent survey by RMG Research which is billed as "a first-of-its-kind look at the views of the American Elite" defines "elites" as people who have graduate degrees, annual incomes of more than $150,000, and live in places with more than 10,000 people per square mile. Education and income are reasonable criteria for defining elite status, although you could argue about where to draw the lines, but population density? I guess you could argue that being in a large metropolitan area means that you're closer to top decision makers in a social as well as a physical sense. But the definition uses population density by zip code, and in the contemporary United States, there's a strong association between neighborhood preference and political views: people who prefer to live in dense areas tend to be more liberal. Moreover, in much of the country, even downtown urban areas don't reach 10,000 per square mile. There are 580 zip codes that meet the standard, and 496 of them are in just six states: New York, California, New Jersey, Illinois, Pennsylvania, and Massachusetts (data can be found here). Only 5% (28) are in states won by Donald Trump in 2020. So rather than a sample of the "American Elite," it would be more accurate to call it a sample of upper-middle class urbanites in blue states. But that's still an important group, so maybe we can still learn something from the survey?
The RMG survey reports that 67% of "elites" had a favorable opinion of members of Congress, compared to only 28% of the general public. The 2021 and 2022 General Social Surveys have a question on confidence in Congress: 6% say they have "a great deal," 41% "only some," and 52% "hardly any." Although it's not possible to reproduce the RMG "elite" exactly with the GSS data, it is possible to come close: among people with graduate degrees, it's 5%, 48%, and 48%; among people with incomes of more than about 150,000 it's 3%, 43%, and 54%, and among people living in the central cities of the twelve largest metropolitan areas, it's 11%, 43%, and 46%. So people with more education and income do not have more confidence in Congress; people living in big cities have a bit more, but that's because they are more likely to be non-white--among whites living in the central cities of the twelve largest metro areas, 7% have a great deal of confidence, 41% only some, and 52% hardly any. There are only 39 people in the GSS who meet all three criteria, but 60% of those have only some confidence and 40% hardly any: in other words, the opinions of "elites" are about the same as those of the general public. The questions aren't exactly the same, but the patterns are so different that it's safe to say that there's a conflict between the surveys. Which one should we believe? The GSS is transparent about its sampling methods; the RMG survey is not--it doesn't say anything. I don't know whether the problem is an unrepresentative sample or a mistake in reporting the results, but the RMG survey can't be taken seriously as a measure of any group's opinion.
This is a return to the analysis of the geographical origins of people involved in the Jan 6, 2021 assault on the Capitol. My original point was that if you're predicting the logarithm of the expected number of insurrectionists from a county, you should control for the logarithm of the population of the county, and you would expect the estimate to be near 1.0--that is, if the population of county B is X times as large as the population of county A, then the number of insurrectionists from county B will be X times as large as the number from county A. But on further reflection, it seems likely that the number will depend not just on the size of the population, but the mix of Trump voters, Biden voters, and everyone else. You'd expect that most of the people involved were Trump supporters, but there could also have been Trump sympathizers who were ineligible to vote, people who were generally against "the system" and voted for minor parties like the Libertarians, and people who were just looking for trouble or had come along with friends. If we had data on how the insurrectionists voted in 2020, we could do separate analyses for each group--e. g., Trump-voting insurrectionists -- but we don't. However, we have data on the votes in each county, so you can estimate a model for the total number of insurrectionists with the logs of Trump voters, Biden voters, and others as predictors. '
The estimates and standard errors from a negative binomial regression:
White decline .016 (.020)
Mfg decline -.007 (.005)
% NH white .011* (.004)
NCHS -.161*** (.048)
Distance -.052 (.065)
Drive 1.001*** (.220)
Drive*Dist -1.436*** (.431)
log(Biden) -0.042 (.105)
log(Trump) .632*** (.165)
log(Other) .409* (.186)
The first three variables, white population decline, manufacturing employment decline, and percent non-Hispanic white, were considered in the original analysis by Pape, Larson, and Ruby. NCHS is a 6-category classification scheme developed by the National Center for Health Statistics: large central metro, large fringe metro, medium metro, small metro, micropolitan, and non-core. Pape, Larson, and Ruby divided that into two groups: the first three categories vs. the last, but I treated it as a numerical variable (more or less urban) since that generally produced a better fit. The next three variables are all related: "Drive" is a 0/1 variable for being in driving distance which I defined as 700 kilometers of Washington, DC. Distance is measured in hundreds of kilometers, so the estimates imply that distance reduces the number of insurrectionists until you get to about 700 kilometers from Washington, and makes no difference beyond 700 miles--that is, the rate is about the same if you're 700 kilometers or 3700 kilometers away. Finally, the number of Biden voters doesn't matter, the number of Trump voters does, and there's some evidence that the number of other people does as well. The fact that the number of Trump voters is an important predictor of the number of insurrectionists might seem like a matter of common sense, but it's contrary to the conclusions of Pape, Larson, and Ruby.
Although the change in the method of controlling for population changes some conclusions, it leaves one point unchanged: insurrectionists tended to come from more urban places (controlling for the other variables). There's no clear difference in the overall rates--the average rate per million is:
Large central 2.51
Large fringe 3.54
Medium 2.76
Small 2.73
Micropolitan 2.81
Rural 2.53
However, the less urban areas tend to have more Trump voters, so when you adjust for that you would expect them to have a higher rate of insurrectionists. I can think of a few ideas about why people in urban areas might be more likely to have participated, but don't have a way to test them, so I'll leave it at that.
PS: The estimates given above are from a negative binomial regression. Results from a Poisson regression are almost the same. I also tried ordinal probit, ordinal logit, and Cox (proportional hazards) regression. With those, the standard errors were generally larger, but the relative values of the estimates were about the same: the only notable difference was that in the Cox regression the estimate of log(Other) was near zero and non-significant.
A couple of weeks ago, Thomas Edsall had a column called "The gender gap is now a gender gulf," which said that there was growing divergence between the political views of young men and young women. He discussed some people who offered explanations, but didn't give much evidence that it was actually happening, so I went to the GSS. I divided people into three age groups (18-34, 35-59, and 60+) and used self-rating on a liberal/conservative scale as a summary of political views.
So there's some support for Edsall's claim (which surprised me--large shifts involving subgroups are unusual). But it just appeared in 2022, so it can't reasonably be explained by long-term social changes like the loss of factory jobs. And nothing unusual was visible in 2016, 2018, or 2021, so it's not a general reaction to Trump. The most obvious novel thing in 2022 was increased attention to abortion because of the Dobbs decision, but that would suggest a leftward movement among young women rather than a rightward movement among young men. I looked at a number of other political views, and found one other case of a large shift among young men between 2021 and 2022. Support for capital punishment increased from 48% to 65% among young men, against only 46% to 51% among young women. You'd expect opinions among younger people to be more flexible, and it seems plausible that men might be more inclined to turn to "get tough" policies when crime is increasing. (Serious crime fell from 2021 to 2022, but perceptions tend to lag behind reality, and opinions are also affected by a general sense of disorder). Of course, it's possible that I'm just picking out a large chance variation, but it seems like it's worth further investigation.
I don't have time for a longer post now, so here is a quick one. In 1996, 2004, and 2014, the General Social Survey asked for reactions to the statement: "America should take stronger measures to exclude illegal immigrants." Options were strongly agree, agree, neither agree nor disagree, disagree, strongly disagree. The results:
SA A N D SD
1996 44 29 13 6 2
2004 31 37 16 11 3
2014 24 33 16 18 4
The balance of opinions was always on the "agree" side, but there was a substantial change: the total agree minus disagree went from 65 to 54 to 35. Unfortunately, the question hasn't been asked since then. The change could be because people became less concerned about illegal immigration or because they came to think that the government was doing a better job in controlling it. I would guess that the first was more important, since I don't recall any changes in policy that got much attention in the media.