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Global Existential Risks - by Roger Pielke Jr.

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In 2022, on a bipartisan basis, the U.S. Congress passed the Global Catastrophic Risk Management Act of 2022 requiring the Department of Homeland Security to coordinate an expert assessment of global catastrophic and existential risks. The Department of Homeland Security published the first Global Catastrophic Risk Assessment two weeks ago, and reached some important — and one surprising — conclusions.

The legislation provided key definitions:

  • The term ‘‘existential risk’’ means the potential for an outcome that would result in human extinction.

  • The term ‘‘global catastrophic risk’’ means the risk of events or incidents consequential enough to significantly harm or set back human civilization

    at the global scale.

  • The term ‘‘global catastrophic and existential threats’’ means threats that with varying likelihood may produce consequences severe enough to result in systemic failure or destruction of critical infrastructure or significant harm to human civilization.

Congress requested that the assessment focus on six areas of risk:

  • the use and development of artificial intelligence (AI);

  • asteroid and comet impacts;

  • sudden and severe changes to Earth’s climate;

  • nuclear war;

  • severe pandemics, whether resulting from naturally occurring events or from synthetic biology;

  • supervolcanoes;

Using the key definitions across these six categories, the table below summarizes my reading of the report.

Below is the full summary table from the report, within which, each chapter goes into extensive detail on each of the six risk categories.

The report is well done, and each of the six risk areas are worth their own focused post here at THB. In the remainder of this post, I highlight what the report says about climate change — which the report does not identify as an existential risk.

The assessment recognizes that changes in climate have many significant consequences for people and ecosystems, but the corresponding risks are local and regional, not global:

“An important dynamic of climate change effects is that any one mechanism by which climate change creates risk, such as those listed above, although potentially devastating on a local to regional scale, might not rise to the level of a global catastrophe or an existential risk.”

The report acknowledges diplomatically that activists often characterize climate change as an existential risk, which reflects “subjective values and worldviews” rather than scientific judgments of real-world risks:

“A strong, international activist movement now exists that engages in advocacy for addressing climate change. That movement emphasizes the urgency of climate change; sponsors civic engagement efforts, including protest and civil disobedience, particularly among youths around the globe; and argues that climate change is a potential existential risk. . . although social movements reflect a genuine and legitimate concern about climate change’s potential risks to society, they are not necessarily grounded in objective assessment of those risks.”

The report acknowledges some of the extreme claims found in the scientific literature from those in the catastrophist planetary boundaries community as well as some of the outlier work in climate econometrics. However, the assessment largely rejects these outliers and is very clear in its conclusion that climate change does not present a catastrophic health risk — even over the course of a century:

“Although there is no accepted determination of what would constitute a global catastrophic health risk from climate change, authors of at least one report defined it as a mass-mortality event taking the equivalent of 25 percent of the population. For the United States, based on the 2020 population (330 million), percent would mean approximately 80 million people, or 2 billion for the estimated global population in 2022 of 8 billion. . . Mortality of this magnitude would effectively be ten times that of the 1918 influenza pandemic. These values suggest a very high bar for catastrophic risk. . . No published study has suggested the possibility of a singular mass-mortality event of this magnitude, nor is there evidence of an indirect mechanism, such as collapse of global food supplies or climate-mediated pathogenesis, that would result in such high rates of mortality. Even with cumulative losses over a century, mortality would not meet these thresholds.”

The bottom line: Climate change is important and poses significant risks that will require continued policy development and implementation in mitigation and adaptation — but climate change is not an existential risk. The world does indeed face existential risks and we should take care that concern over climate does not overshadow these other risks.

Last night I had the chance to give a talk to a wonderful group of thoughtful and informed normal folks in downtown Denver. After the event a women came up to me and asked if I was afraid of climate change. I responded that I was not, for the simple reason that despite the very real risks of changes in climate, we are focused on those risks. I told her that I worry much more about the things that we are not paying attention to, noting that the COVID-19 pandemic arose following a long period where there was little attention or concern about pandemics among most scientists or policy makers.

In a paper I wrote almost a decade ago, I warned that the catastrophes of the 21st century may — like COVID-19 — come from places not at the center of our attention:

I suggest three types of catastrophes lie ahead. The familiar – hazards that we have come to expect based on experience and knowledge, such as earthquakes and typhoons. The emergent – hazards that are the product of a complex, interconnected world, such as financial meltdowns, supply chain disruption and epidemics. The extraordinary -- hazards that may or may not be foreseen or foreseeable, but for which we are wholly unprepared, such as an asteroid impact, massive solar storm, or even fantastic scenarios found only in fiction, such as the consequences of contact with alien life. I will argue that our collective attention and expertise is, perhaps understandably, disproportionately focused on the familiar. The consequence, however, is a sort of intellectual myopia. We know more than we think about the familiar and less than we should about the emergent and the extraordinary. Yet our ability to deal with the hazards of the future likely depends much more on our ability to prepare for the emergent and the extraordinary.

The first Global Catastrophic Risk assessment by the U.S. government is an excellent starting point for a continuing discussion about catastrophic risks and how we might better prepare for them. It tells us that where our focus lies may not be where we find the greatest risks.

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Waymo compiles ‘largest ever’ dataset of pedestrian and cyclist injuries - The Verge

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If autonomous vehicles are to go mainstream, they need to go as far as they can to ensure the safety of everyone on the road. And no one is in more need of protection than so-called vulnerable road users like pedestrians, cyclists, and motorcyclists, thousands of whom are killed every year.

Waymo, the robotaxi company owned by Alphabet, recently published a new study examining hundreds of these types of crashes involving vulnerable road users, which it is calling “the largest dataset of its kind in the US.”

Roughly 40,000 people in the US are killed each year in vehicle crashes. But while automakers have become very good at protecting people inside of vehicles, they have essentially neglected the safety of people outside of them.

Meanwhile, the academic community has shown little interest in studying injuries of vulnerable road users (VRUs), so Waymo set out to rectify that, said John Scanlon, a safety researcher at Waymo. The goal was to shine a light on this underexamined area of traffic research in the hopes that the results could help make Waymo’s driverless technology safer — and maybe even help out some of its rivals, too.

The academic community has shown little interest in studying injuries of vulnerable road users

The new research comes amid a deadly period for pedestrians and cyclists in the US, where reports of injuries and fatalities remain frustratingly high. In 2022, 7,522 pedestrians were killed in vehicle crashes and more than 67,000 pedestrians were injured nationwide, according to the National Highway Traffic Safety Administration.

“An accurate, in-depth understanding of the unique safety risks presented to these groups is critical in developing effective strategies to reduce injuries and fatalities,” Scanlon said.

To study these types of injuries, Scanlon and his team first needed footage from hundreds of car crashes, so it partnered with dash cam company Nexar. Sifting through Nexar’s anonymized data of 500 million miles of driving, Scanlon’s team successfully reconstructed 335 crashes involving VRUs — pedestrians, cyclists, and motorcyclists — in six American cities. However, the data was heavily skewed toward New York City, where 80 percent of the incidents took place. The anonymous individuals in the dataset suffered moderate to severe injuries, depending on the collision, but none of the crashes Waymo studied were fatal.

The result is the “largest, documented naturalistic driving dataset in the US,” the company says. By studying this data, Waymo hopes to gain better insight into how, when, and why vulnerable road users get injured by vehicle drivers. And by zeroing in on the “frequency and severity” of collisions, Waymo was able to draw several relevant conclusions from the dataset.

On the surface, the results seem pretty obvious. Pedestrians and cyclists were more likely to be injured when they “surprise” drivers, like attempting to cross the street against the traffic light. Also, “geometric occlusions,” like trees, bushes, buildings, or other vehicles, led to a higher risk of injury. And the vehicle’s trajectory, the direction it is traveling or turning, played a significant role.

“An accurate, in-depth understanding of the unique safety risks presented to these groups is critical”

Waymo partnered with VUFO, a traffic research group based in Germany, to develop models for injury risk assessment. It also leveraged anonymized data from the German In-Depth Accident Study, which includes information on thousands of VRU crashes over more than two decades and represents “the most relevant data available in the world today” for estimating injury risk for VRUs.

Waymo’s driverless vehicles operate in San Francisco, Los Angeles, and Phoenix, where they conduct over 150,000 paid trips a week. The company is planning to launch its robotaxi service in Austin and Atlanta as well. And every day, a driverless Waymo vehicle must navigate an environment full of vulnerable road users. One false move could be deadly, and if past is prologue, the AV operators have to be prepared to accept full responsibility for what went wrong.

There have been a handful of collisions involving driverless vehicles and a few injuries. A cyclist was injured by a Waymo vehicle in San Francisco in February 2024 after emerging from behind a truck that was blocking the view. And last year, a Cruise vehicle struck a pedestrian and then dragged her to the side of the road. The company is still dealing with the fallout.

Scanlon said that by better understanding these types of collisions, AV operators can recreate them both in simulation and real-world testing, which could lead to safer decisions.

“This analysis can serve as a starting point for pinpointing baseline driving risk associated with VRU collisions in dense-urban areas, which will, in turn, enable AV performance testing and evaluation,” he said.

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Racial differences in homicide rates are poorly explained by economics – Random Critical Analysis

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There are large racial differences in the homicide rates in the United States.  The FBI and other government organizations are not always forthcoming with detailed data, but you can quite readily estimate it (approximately) with the victimization/mortality data from the CDC and other sources (most crimes being committed intra-racially)

avg_hom_rate_nat

The black homicide rate is about 10 times higher than the white rate. It has been this way for quite some time (i.e., even as the rates have changed the differences themselves have remained fairly stable).

Google Chrome

Similar patterns can be found elsewhere, but I find the homicide statistic useful and interesting for many different reasons, namely:

  1. it is hard to sweep it under the rug statistically or otherwise distort (e.g., under-reporting, misattribution, etc)
  2. it is a good bellwether for broader differences in social conditions.
  3. the statistics are readily available
  4. it demonstrates the limited power of mechanistic economic explanations and that even large residuals associated with race/ethnicity are not necessarily the product of “racism” on the part of police, teachers, etc.

There are, of course, many progressives today that will claim that black-on-black crime is a “myth” or that these differences are fairly modest and can be explained mostly by stuff like poverty.  This despite decades old scholarship from some progressive-minded people:

Despite these facts, the discussion of race and crime is n-tired in an unproductive mix of controversy and silence. At the same time that articles on age and gender abound, criminologists are loath to speak openly on race and crime for fear of being misunderstood or labeled racist. This situation is not unique, for until recently scholars of urban poverty also consciously avoided discussion of race and social dislocations in the inner city lest theybe accused of blaming the victim (see W. J. Wilson 1987). And when the topic is broached, criminologists have reduced the race-crime debate to simplistic arguments about culture versus social structure. On the one side, structuralists argue for the primacy of “relative deprivation” to understand black crime (e.g., Blau and Blau 1982), even though the evidence on social class and crime is weak at best. On the other side, cultural theorists tend to focus on an indigenous culture of violence in black ghettos (e. g., Wolfgang and Ferracuti 1967), even though the evidence there is weak too.

Still others engage in subterfuge, denying race-related differentials in violence and focusing instead on police bias and the alleged invalidity of official crime statistics (e.g., Stark 1990). This in spite of evidence not only from death records but also from survey reports showing that blacks are disproportionately victimized by and involved in, criminal violence (Hindelang 1976,1978). Hence, much like the silence on race and inner-city social dislocations engendered by the vociferous attacks on the Moynihan Report in the 1960’s, criminologists have, with few exceptions (e.g., Hawkins 1986; Hindelang 1978; Katz 1988), abdicated serious scholarly debate on race and crime.

Or, more recently, analysis conducted by others:

Google Chrome

Given the intense focus recently on “concentrated poverty” and segregation I decided to take a more in-depth look at this data for myself.  I downloaded the CDC mortality data by county (2004-2013) and cross-referenced that with the Census ACS data by county (2010).  I analyzed the data collectively (assessing the impact of % of each racial group and other covariates on the overall homicide rate within a county) and separately, disaggregated by race/ethnicity (assessing the determinants of each groups’ homicide rate with their own ACS county-level estimates).  Although analyzing data at a county level isn’t as good as more granular levels of analysis in some respects, the way I see it is that even if each group is heavily segregated the controls should allow us to do a pretty good job of estimating these effects (especially when comparing each groups’ homicide rate to their own poverty rates and the like)..

Race is a strong predictor of homicide rates at a county level.

all_hom_by_pct_black

It predicts better than the poverty rate, median household income, racial segregation, income segregation, education rates, and so on and so forth.

combined_corr_matrix

The single-motherhood rate is a close second though.

In the linear multi-regression models below I scaled all variables in standard deviation (SD) units to make it easier to compare their relative magnitude.

texmaker

As you can see in model (1)  a one standard deviation increase in percent black corresponds to a bit more than a one standard deviation increase in the county homicide rate.  Controlling for the poverty rate, single-motherhood rate, and racial segregation rate, as we see in model (4), reduces the association with black to about 0.6 SD.

Curiously a 1 SD increase in the Theil racial segregation index is associated with a ~0.18 SD increase in the homicide rate, which is non-trivial,  though perhaps less than some might expect.  I am not convinced that segregation itself actually causes increased violence because it’s likely that increased violence and crime actually spurs further racial segregation, i.e., the arrow of causation likely runs substantially in the other direction (though I wouldn’t necessarily deny the potential for co-causality/feedback loops here).  You might also note this (standardized) coefficient is roughly of the same scale as the coefficients for single-motherhood and poverty segregation.  It’s also appreciably less than the association with poverty.

all_hom_by_race_seg

all_hom_by_pct_black_grp_by_race_seg_quintiles

Even in modestly racially segregated counties percent black remains a very strong predictor of homicide rates.

Below are the regression results with and without controls keeping the dependent variable and race/ethnicity unscaled to make comparison across groups easier.

texmaker

In model 1 transitioning from a 100% white to 100% black county increases the expected homicide rate by ~28 homicides per 100,000 people per year whereas the change in the expected outcome is “only” ~18.5 in model 2 with extensive controls (keep in mind that the average homicide rate in N/W Europe is 1.0-1.5 per 100,000).   This implies that controlling for an extensive set of covariates (in a linear model) only reduces the expected homicide rate differential by ~35%.

Race remains an exceptionally strong predictor and this cannot be explained plausibly by racism/bias in reporting, prosecution, etc because this measure (which is derived from coroner reports) removes that sort of thing from the equation entirely.

Poverty rates seem to be a strong predictor and was traditionally, in popular imagination, the go-to explanation for crime rate differences, so let’s take a brief look at that.

all_hom_by_pct_black_grp_by_pov_rate_quintiles

all_hom_by_pov_rate_grp_by_black_quintiles

Although it’s clear that poverty predicts homicide quite independently of black, it’s also clear that black predicts independently of the poverty.  Moreover, if you look closely at the distribution and other analysis I present here it’ll be clear that poverty doesn’t come close to closing these racial differences.

Single-motherhood is also a strong predictor.

all_hom_by_sm_rate_grp_by_black_quintiles

all_hom_by_pct_black_grp_by_sm_quintiles

all_hom_by_pct_black_grp_by_sm_deciles

Although the data are somewhat noisy and single-motherhood is quite strongly associated with the black population (r=0.76 at the county level), it seems to me that:

  1. there is a non-linear relationship between single-motherhood and homicide (which may be throwing off the linear model estimates somewhat)
  2. counties with very high rates of single-motherhood have very high homicide rates even with negligible black populations
  3. blacker counties with low-rates of single-motherhood seem to have homicide rates much closer to the national average (the same cannot be said for other covariates)

Based on the other evidence I have seen, I have come to view the single-motherhood being at least a very strong proxy for community health is and, in many respects, a stronger predictor of inter-racial differences than other measures like poverty rates.  It does not entirely explain the observed racial differences here, but it mediates much of the relationship and does so more effectively than other common measures.

Controlling for single-motherhood rates with an unweighted loess regression I find little evidence to suggest that percent black adds much in the way of predictive validity.

loess_smop_by_black

Whereas if I invert this, I do indeed find that single-motherhood rates have some incremental power over and above percent black.

loess_blackop_by_sm

Obviously these two measures are well correlated, so it might be helpful to see counties with unexpectedly high or low rates of single-motherhood given their black population share….

black_op_by_dev_from_expected_sm

Counties with higher than expected rates of single-motherhood given their black population (negative on x-axis) have much higher than expected homicide rates given their black population (negative on y-axis).

If I flip this around:

sm_op_by_dev_from_expected_black

I find a modest association in counties with higher than expected black populations based on their single-motherhood rates, but it’s much weaker than the above relationship.

Likewise, single-motherhood has incremental power, even accounting for poverty rates.

loess_povop_by_sm_pred

whereas the same is much less true in the reverse.

loess_smop_by_pov_pred

Like I did above with percent black and single-motherhood rates, if I look at the homicide residuals (over-predictions) on single-motherhood and poverty rates by deviations from expected poverty rates (as a function of single-motherhood) or single-motherhood rates (as a function of poverty rates), I generally find single-motherhood to be much more influential.

smop_by_op_pov_from_sm

povop_by_op_sm_from_pov

Counties with much higher than expected rates of single-motherhood (negative on x-axis) given the poverty rate, have much higher than expected homicide rates (negative on y-axis).

Of course black(er) counties systematically deviate along these lines.

povop_by_op_sm_from_pov_color_by_black_quintile

At any given income level, black communities tend towards substantially higher average rates of single-motherhood (which, incidentally, contributes significantly differences in poverty rates as this data is reported).

Obviously this analysis is not exhaustive, but it certainly tends to support my view that single-motherhood is a strong predictor and that it not well explained by percent black or poverty rates.

Besides the analysis above whereby I rely on multiple regressions to estimate the racial associations and the like from the aggregated data (all racial groups combined into single statistics), I also downloaded and analyzed racially disaggregated data for homicide rates and census demographic statistics (note: I exclude asians and pacific islanders from this part of the analysis because census and CDC aggregate this data differently and I didn’t feel like attempt to re-weight the census data to re-constitute their hybrid asian/pacific islander group).

The advantage of this approach is that even if every group is well segregated the income and SES-related statistics ought to do a pretty good job of describing the state of each community economically (unlike doing this analysis with racially aggregated data where we should probably expect blacks and latinos to have lower average income than county-wide statistics would suggest)

sep_hom_by_mfi

sep_hom_by_mean_income

sep_hom_by_median_hh_income

sep_hm_by_per_capita_income

hom_sep_by_family_poverty_rate

sep_hom_by_child_poverty_rate

sep_hom_by_median_worker_earnings

By now I think it should be pretty clear that the economic conditions of each group are not particularly strong predictors of their victimization rates and that they certainly don’t come close to closing the white-black gap.  Even poor “white” counties have homicide rates quite a bit lower than affluent “black” counties with low poverty rates.

sep_hom_by_hs_grad_plus

sep_hom_bach_plus

hom_sep_by_unemployment_rate

sep_hom_by_labor_force_participation

(Note: Obviously the employment statistics fluctuates with time and large demographic shifts, but I’d bet there is a pretty good correlation across time or, at least, over the span of 5-10 years, i.e., communities with elevated unemployment in good times will usually be even more elevated in bad times, thus preserving the ordinal relationships reasonably well).

sep_hom_by_median_housing_value

sep_hom_by_median_gross_rent

sep_hom_by_percent_rent sep_by_home_ownership_rate

Most of these measures are usually at least fairly well correlated so combining them won’t do much to close these differences either, but for the sake of skeptics….

sep_hom_by_ed_and_incpc

sep_hom_by_child_pov_and_bachplus

(Note: I flipped the sign on poverty to keep its effects consistent with education and other covariates below)

sep_hom_by_bsplus_cpov_rent

sep_hom_by_bs_cpov_mrent_homeowner

sep_hom_rent_mhouse_incomepc_cpov

One could play around with this forever, but I very much doubt that anyone can find a realistic economic-driven model that explains this.  I do not dispute that there may be important ecological differences in these communities or that these differences might have some non-trivial influence, but the homicide differences are too vast to be explained by objective differences in the economic characteristics of the communities.  Even with the composites above, some of which are influenced substantially by behavioral differences, which are not purely economic, and which are sensitive to things like crime rates (e.g., more crime tends to drive down housing and rental prices, encourage more “white flight”, etc), do not come close to closing these large gaps.

Although the single-motherhood rate is a strong predictor with the racially-aggregated  (combined) data, the picture is more complicated when trying to predict homicides for each group in the disaggregated data.

sep_hom_by_sm_unweighted_loess

sep_hom_by_sm_weight_lm

The effects seem to be the larger for blacks, followed by non-hispanic whites, followed distantly by latinos.  Of course, if you believe that these “effects” are non-linear and realize that loess regressions do a poor job of dealing with sparse data (as in, there are very few large “white” counties with high rates of single-motherhood), then you might find this weighted loess regression interesting:

sep_hom_by_sm_combined_loess_regression

This plausibly explains a good deal of within and across group variation.  The same cannot be said if I apply this same technique to other measures.

Like median family income…..

sep_hom_by_mfi_comb_loess

It systematically overshoots the white and latino rates even when there is plenty of density and undershoots the black rate.

Or child poverty rates…

sep_hom_by_cpov_comb_loess

Or percent of households with bachelor or higher

sep_hom_by_bachplus_wt_loess

Or percent of households with HS diploma or higher

sep_hom_by_hsdip_with_wt_loess

Or median housing value

sep_hom_med_house_value_by_wt_loess

Or median gross rent

sep_hom_by_rent_wt_loess

…. you get the point.

One way to try to answer this question is with a mixed effects model (specifically with the  lme4 package in R).  By allowing for fixed racial effects (as in, each group has its own intercept) and, later, in some models, random effects (varying slopes for each racial group), I can try to better estimate how much these covariates explain homicide rates within and across groups.

First, I’ll compare several population-weighted models with fixed effects.

texmakerYou might note that in model (2) introducing poverty rates into the mix does little to change the homicide rate differences (compare to the racial coefficients in model 1) whereas in model (3) the white-black delta is about half the size.  Likewise, in model (4), where I control for both poverty and family formation, the gaps actually increase slightly relative to model (3) and that the standardized single-motherhood coefficient is still about twice as large as the standardized poverty rate coefficient (keep in mind that the racial differences in single-motherhood are much larger than the economic differences).

If I go a step or two further and introduce non-group specific statistics, i.e,. county-wide, for percentage black, racial segregation, and poverty segregation into the mix:

texmaker

The single-motherhood rate is still very much significant, likewise for differences in the racial coefficients.  I feel this is important to show because there appears to be fairly strong association between the county-wide racial segregation index and homicide rates for blacks, in particular, in simple bivariate regressions.  Though you might also note that even in perfectly racially integrated counties (according to the index) the black homicide rate is still much higher than average and that most blacks are not in these heavily segregated counties.

RStudio

Likewise, direct measures of “concentrated poverty”, i.e., poverty segregation vs racial segregation, seem to show an even weaker relationship.

RStudio

Now if I go a step further and introduce random effects into these mixed effect models whereby groups are allowed to respond differently to these covariates (which may or may not make sense)….

Microsoft Excel

texmaker

As in the purely fixed effects model, single-motherhood does much to explain the black-white gap (albeit largely through the black rate), largely mediates the association with poverty (see model 3), and poverty segregation (as in model 4) does little to explain this either.   Ideally I’d measure the poverty segregation levels of each group separately (don’t have that data yet), though I largely capture this with the family poverty rate (measured at a group level).

I wouldn’t take these random effect models too seriously except to the extent that it further support the position that these “effects” aren’t likely to be explained by different baseline levels of single-motherhood and the like between groups(i.e., i’d produce similar estimates if I were to run regressions on the black community independently) and that these black difference are generally poorly explained by economic measures like poverty.

As in a prior post, wherein I compared aggregated rates of single-motherhood to out-of-school suspension rates and found very strong correlations, much higher than other key covariates, I repeat this procedure with homicide rates at the national level (note: I had more groups in suspensions post)

test-1

nat_hom_by_suspensions

test-5test-6

test-2

test-3

test-4

test2-1 test2-2

State-level comparisons between single-parent family rates and homicide rates

state_homs_by_sprate_ln_by_group

state_homs_by_sprate_loess_for_all

state_homs_by_sprate_ln_by_group_logystate_homs_by_sprate_ln_all_logy

RStudio

State-level comparison between male suspension rates and homicide rates

hom_by_male_sm_loess_all

hom_by_susp_lm_sep

hom_by_susp_lm_sep_logy

hom_by_susp_lm_all_logy

RStudio

At any given income level the rate of single-motherhood is much higher in the black community.  This is clearly not just a phenomenon having to do with income levels.

sm_by_mfi

Nor is it well explained by poverty rates

sm_by_fampov

Also this whole “concentrated poverty” notion cuts both ways.  Because affluent blacks are more likely to live near poverty, poor blacks are necessarily (somewhat) more likely to live near modally affluent (~middle class) peers.

mfi_by_pov_rate

And more college educated adults.

bachrate_by_fam_pov

My point here is that the proponents of this view tend to overstate the economic (and sometimes educational) aspects of this and seem to want to have it both ways.

Nor do blacks have a monopoly on “concentrated poverty”.  Even at the hyper-local census-tract level we don’t find this.

Google Chrome

While blacks are more likely to live in “high-poverty neighborhoods” (>= 40% poor at census-tract level), only about 10% of blacks live in these neighborhoods nationwide.

Google Chrome

Along a similar vein, the “concentration of poverty” metric (the proportion of poor that live in high poverty neighborhoods) tends to suggest this pattern is not just an urban (big city) phenomenon for blacks and that it generally corresponds pretty well to their elevated overall poverty rates (my use of racially disaggregated poverty rates within each group at a county level likely corresponds quite well with this).  All groups are appreciably are more likely to live near their own and thus poverty rates have clear predictive power for the amount of “concentration of poverty” you are apt to find in any given area.

Google Chrome

It’s also worth noting that the hispanic poverty concentration is pretty similar to blacks and yet their homicide rates are much lower (even controlling for poverty rates).

Other things being equal (e.g., earnings levels, employment, etc) higher rates of single-motherhood will tend to have a direct mechanistic effect on poverty rates (fewer earners and lower average female earnings) which, itself, will tend to increase the “concentration” metric too. (Which does not mean that single-motherhood is simply measuring poverty, because poverty rates don’t explain differences in single-motherhood that well, especially not between groups…. even though aggregating the data together implies it’s a near-linear inverse relationship, see table below).

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I have also seen various media reports of analysis that purport very large differences in “neighborhood disadvantage”.

For example:

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This figure implies that there is very little overlap in neighborhood context, which may actually be sort of true, but this methodology obviously leans heavily on single-motherhood rates and racial segregation to find racial differences this vast, i.e. it’s not simply a measure of concentration of poverty.

I  must confess that I am a little unclear as to how it is that people that presumably believe there no are important cultural differences between groups think that racial segregation per se, after controlling extensively for economic conditions, education rates, and the like, is supposed to have large, quantitively significant, effects on socially important outcomes.   If they truly believe that then controlling for the educational, occupational, and income levels of neighborhoods ought to render racial differences insignificant.

If these sorts of (statistical) differences don’t exist between racial groups after controlling for socio-economic conditions especially, then why should the racial composition of the neighborhood matter?  But if they do matter, as careful analysis of that data clearly indicates, then it makes even less sense to attribute any and all so-called racial segregation to racism and similar irrational behavior (i.e., racial segregation may be unfortunate and consequential, but that doesn’t mean that it’s actually irrational).

While I have argued that even controlling for socio-economic status (SES) blacks are more likely to have serious social problems, I wish to make clear, in case I have not already done so, that this is a statistical proposition.  I am not arguing that arguing that most black men have committed serious crimes anymore than progressives that argue that SES is an important consideration in crime mean to argue that all poor people (of any race) are criminals.  Even controlling for typical measures of SES, we still find that race has quite a bit of predictive value when it comes to crime, school discipline problems, and the like.

To this point, I have seen good evidence that black immigrants in the US experience vastly lower rates of incarceration (much closer to the white average).

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It’s also not likely to be explained well by selection (e.g., cognitive ability, education levels, etc) because we find these differences even controlling for education levels.

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I find some suggestive evidence of this in my own data too:

RStudio

This is probably not a coincidence either:

RStudio.png

To summarize:

  1. There are vast differences in homicide rates between groups
    • This “effect” is found consistently in aggregated and (racially) disaggregated data
  2. Inter-racial differences are better explained by family structure than economic conditions.
    • These differences are even found in some pretty affluent/low-poverty communities
  3. The (intra-racial) black homicide rate, in particular, is better explained by family structure than poverty rates and, especially, other economic measures.
  4. There are large differences in family structure between whites and blacks, in particular.
    • It’s probably not a coincidence that other groups fall closely along this regression line when aggregated at national or even state levels.
  5. The inter-racial differences in family structure are not well explained by income or poverty measures, i.e., (domestic) blacks of the same income level have much lower levels of traditional family structure.

Although there is a significant and growing body of evidence that school discipline, county-wide crime rates, and the like are significantly influenced by genetic risk-factors and although heritable differences between racial groups cannot simply be assumed away, I do not believe that all group differences are necessarily genetic (not entirely at least!).  It is possible, perhaps even likely, that heritable differences explain some of these differences in family structure (both within and between groups), but even so that does not mean that spillover effects cannot add up in disastrous ways (concentrating large numbers of poorly supervised, poorly socialized young men, especially low social status young men, may produce effects that we might not find if they were more dispersed or better integrated into society).

Regardless, if community context does have non-trivial effects on outcomes of this sort, then advocates for “de-segregation” work at cross-purposes when they argue: that racial differences don’t exist; that they can be explained almost entirely by economic conditions; or that anything that remains after such controls are put in place must be explained by racism, bias…. and so on and so forth.

It is abundantly clear that there actually are large racial differences even within schools and classrooms with respect to discipline problems, academic outcomes, and the like today.  These differences exist even with standard controls for SES (though, incidentally, many studies use SES controls when measuring the effects of integration, but the sort of integration people think usually involves low-SES blacks).  If people truly want more and better integration then denying these facts and implicitly charging schools, teachers, and the like with racism for disparate outcomes is ultimately counter-productive.  If blacks are statistically more likely to seriously misbehave due to unmeasured differences like family structure (or, alternatively, unmeasured “social capital”) raising holy hell every time significant disparities are found and insisting that “racism” is the cause is only apt to increase resistance to further integrating neighborhoods and schools because broadly middle class whites, asians, and most other parents (blacks included) really don’t want to their children to be in school with unruly or even violent children.  They are likely to remove their children from said environment if it is in their power.

Firm discipline may, arguably, be the price of admission if more integration of neighborhoods and schools is desired on both the economic and racial dimension. Statistical racial differences are all but inevitable in those circumstances (i.e., especially integrating low-SES blacks in with middle class whites, asians, etc).  Different discipline procedures might help to reduce the absolute rates of suspension and expulsion (hopefully without worse unintended consequences!), but racial differences are still bound to be non-trivial for the foreseeable future and it’s hard to even grapple with these things productively as a society when we deny basic objective facts and suppress vocal dissent.

The ability to suppress open dissent should not be confused with the ability to suppress the consequences of dissent.  It especially should not be confused with the reality of the issue itself.

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mjferro
3 days ago
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Liked on YouTube: I FORCED Myself to Play Fallout 1

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I FORCED Myself to Play Fallout 1
I FORCED Myself to Play Fallout 1 Today I decided to play the original Fallout. The Fallout 1 game. I wanted to see if this older game in the Fallout franchise is worth your time, if its fun, and if anyone else should even try playing it. In this video I want to showcase my early gameplay experiences with the game and tell you how I played through everything. 💬 SOCIALS 💬​ Twitter ➜ <a href="https://twitter.com/MrSaviorHD" rel="nofollow">https://twitter.com/MrSaviorHD</a> Twitch ➜ <a href="https://ift.tt/MN2yhzY" rel="nofollow">https://ift.tt/MN2yhzY</a> Edited by: Savior & thatboylazo Lazo: <a href="https://ift.tt/65k4RFV" rel="nofollow">https://ift.tt/65k4RFV</a> Thumbnail: @hotcyder 0:00 Intro 0:25 The Game 15:25 What do I think? MrSaviorHD, MrSavior, fallout, fallout 1, original fallout, is fallout fun, the first fallout game, fallout 2024, should I play fallout 1, what is fallout 1, is fallout 1 worth my time, fallout 1 playthrough, fallout one, fallout 1 game, fall out 1 I FORCED Myself to Play Fallout 1 #fallout #gaming #fallout1
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mjferro
3 days ago
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Liked on YouTube: 10 Reasons You Didn't See This Coming - Konstantin Kisin

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10 Reasons You Didn't See This Coming - Konstantin Kisin
For my British and European friends who are "shocked" and "surprised", here are 10 reasons you didn't see this coming. Go to <a href="https://ift.tt/40DTc3v" rel="nofollow">https://ift.tt/40DTc3v</a> to escape the echo chamber and stay fully informed. Use our link to save 50% on the Ground News unlimited access Vantage plan this month. Konstantin on Substack - <a href="https://ift.tt/ARnP7yx" rel="nofollow">https://ift.tt/ARnP7yx</a> Konstantin on Twitter - <a href="https://ift.tt/8Bq62cC" rel="nofollow">https://ift.tt/8Bq62cC</a> Join our exclusive TRIGGERnometry community on Substack! <a href="https://ift.tt/pJtgW7I" rel="nofollow">https://ift.tt/pJtgW7I</a> OR Support TRIGGERnometry Here: Bitcoin: bc1qm6vvhduc6s3rvy8u76sllmrfpynfv94qw8p8d5 Shop Merch here - <a href="https://ift.tt/oEuXRQD" rel="nofollow">https://ift.tt/oEuXRQD</a> Advertise on TRIGGERnometry: <a href="mailto:marketing@triggerpod.co.uk">marketing@triggerpod.co.uk</a> Find TRIGGERnometry on Social Media: <a href="https://twitter.com/triggerpod">https://twitter.com/triggerpod</a> <a href="https://ift.tt/UeiJtHW">https://ift.tt/UeiJtHW</a> <a href="https://ift.tt/8ixV3Tc">https://ift.tt/8ixV3Tc</a> About TRIGGERnometry: Stand-up comedians Konstantin Kisin (@konstantinkisin) and Francis Foster (@francisjfoster) make sense of politics, economics, free speech, AI, drug policy and WW3 with the help of presidential advisors, renowned economists, award-winning journalists, controversial writers, leading scientists and notorious comedians.
via YouTube <a href="https://www.youtube.com/watch?v=KlFTLhei7J8" rel="nofollow">https://www.youtube.com/watch?v=KlFTLhei7J8</a>

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mjferro
6 days ago
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River Forest, Ill
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