Economy
Is your area booming or busting, or just chugging along?
December 26, 2014
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The
economy might be leaving a lot of people dissatisfied, but at least
we're living in a golden age of interactive maps about how the economy
sucks. Three different maps released in the last few weeks approach the
question from three different angles: wage stagnation, when wages
peaked, and men who aren't currently part of the labor force.
The Wall Street Journal's map addresses the question of
wage stagnation (click
through to see the interactive version of the map), looking
county-by-county at whether inflation-adjusted wages are better than
they were a decade ago, or not. Dark-colored counties have seen wages
increase, while light-colored counties have gone backward. Nearly
one-third of
all counties, which hold 46 percent of the nation's population, have
seen a decline in median income in the period from 2004 to 2013, when
adjusting for inflation. There isn't a clear red/blue split between the
counties that did or didn't decline, though; 280 of about 700 counties
that voted for Barack Obama in 2012 saw declines (about 40 percent),
while 800 of 2,400 counties that voted for Mitt Romney saw declines
(about 33 percent).
As the WSJ points out, the biggest wage
increases came in states most associated with the energy sector: not
just new sites of fracking like North Dakota and Wyoming, but also
old-school oil patches like Texas and Louisiana. The states with the
declines seem, in particular, to be manufacturing-centered (not just
traditional smokestack-industry states like Michigan and Ohio, but also
the Carolinas). States with either direct (California, Florida) or
indirect (Oregon, via the timber industry's collapse following the
collapse in housing construction) housing bubble problems during the
2000s also show up.
Another
map comes from the Washington Post, as part of an introduction to a
multi-part series about the problems facing the middle class. It's an
interesting
chronological map (click
through for the interactive version), filtering out the counties
according to in which decade inflation-adjusted incomes peaked. Here,
the light-colored counties are the ones doing well (with incomes
currently peaking), while the dark-colored counties are doing the worst
(having peaked furthest in the past). Rust Belt (especially upstate New
York) incomes tended to peak in the '60s, Appalachian incomes peaked in
the '70s, and most places' incomes peaked in the prosperous '90s.
This is vaguely reminiscent of an interactive map I created earlier this year, mapping when counties'
populations peaked,
but the new map shows something very different: the mostly empty
counties across the Great Plains that peaked, population-wise, in the
1920s and 1930s are the ones where incomes are peaking right now. That's
partly thanks to the energy sector, especially fracking, but also
because of agriculture, which can be profitable but thanks to automation
doesn't require any near as large a work force as it used to.
The
final map is from a New York Times multi-article look at, specifically,
men in the work force. It's a map of the percentage of men of prime
working age (25-54) who
aren't working (click
through for the interactive version), drilling all the way down to the
census tract level. Dark-colored counties have the highest rate of men
not working, while light-colored counties have the highest rate of men
in the labor force. The lowest rates are in both prosperous urban cores
and suburbs in major metropolitan areas, and also in those Great Plains
rural counties mentioned above.
The highest rates
tend to be in high-poverty areas like the Appalachians, reservations,
and the Black Belt, and also some agricultural areas with seasonal work
forces. While some urban cores have high levels of worker participation,
certain others don't (try zooming in on Detroit, for instance). There
are also high rates in pockets around major universities; this exposes a
weakness of this kind of analysis ... late-twentysomethings pursuing
graduate degrees get lumped in with disabled and long-term unemployed
persons. A
separate chart helps distinguish these categories, but only at a national level; A recent
Pew study
also found a similar breakdown of what men who aren't working do (with
"ill or disabled" a plurality, and "unable to find work" not a much
bigger segment than stay-at-home dads or full-time students).
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