Violent crime
77.11
83.18
66.13
Property crime
132.26
116.46
86.89
Murder
51.00
66.57
55.39
Prisoners per 1000 residents
2.83
1.26
0.86
Police per 1000 residents
2.85
0.64
0.27
State personal income per capita
($1997)
23207
3408
1361
AFDC generosity per recipient family
(t–15)
7242
2905
1364
State unemployment rate (percent
unemployed)
6.15
1.55
1.21
Beer consumption per capita (gallons)
23.03
3.32
1.24
Poverty rate (percent below poverty
level)
13.80
3.51
1.64
Violent crime arrests per 1000, under
age 25
3.18
1.46
0.49
Property crime arrests per 1000,
under age 25
12.36
3.76
1.44
Murder arrests per 1000, under age
25
0.11
0.06
0.03
Violent crime arrests per 1000, age
25 and over
2.04
1.06
0.34
Property crime arrests per 1000, age
25 and over
4.82
1.58
0.65
Murder arrests per 1000, age 25 and
over
0.06
0.03
0.01
All values reported are means of annual, state-level observations for the period 1985–1997 with the
following exceptions. Arrest data cover the years 1985–1996, and AFDC generosity data are for the years
1985–1998. The police and prisons data are once-lagged, and thus correspond to the years 1984 –1996. The
values reported in the table are population weighted averages. The effective abortion rate is a weighted
average of the abortion rates for each cohort born in a state, with weights determined by the percentage of
arrests by age for a given crime category in the United States in 1985 as shown in equation (1). All summary
statistics are based on 663 observations, except where otherwise noted. Because of missing data, arrest
statistics are based on 574 observations, compared with a theoretical maximum of 612. AFDC statistics are
based on 714 observations. See Data Appendix for further details.
403
LEGALIZED ABORTION AND CRIME
by the coef cients on abortion is substantial. An increase in the
effective abortion rate of 100 per 1000 live births (the mean
effective abortion rate in 1997 for violent crime is 180 with a
standard deviation of 96 across states) is associated with a reduc-
tion of 12 percent in murder, 13 percent in violent crime, and 9
percent in property crime. In Table II, comparing the states in the
top third with respect to abortions to the states in the bottom
third, our parameter estimates imply that crime fell an additional
16 –25 percent in the former states by 1997 due to greater usage
TABLE IV
P
ANEL
-
DATA
E
STIMATES OF THE
R
ELATIONSHIP BETWEEN
A
BORTION
R
ATES AND
C
RIME
Variable
ln(Violent
crime per
capita)
ln(Property
crime per
capita)
ln(Murder per
capita)
(1)
(2)
(3)
(4)
(5)
(6)
“Effective” abortion rate
(
3 100)
2
.137
2
.129
2
.095
2
.091
2
.108
2
.121
(.023)
(.024)
(.018)
(.018)
(.036)
(.047)
ln(prisoners per capita)
(t 2
1)
—
2
.027
—
2
.159
—
2
.231
(.044)
(.036)
(.080)
ln(police per capita)
(t 2
1)
—
2
.028
—
2
.049
—
2
.300
(.045)
(.045)
(.109)
State unemployment rate
(percent unemployed)
—
.069
—
1.310
—
.968
(.505)
(.389)
(.794)
ln(state income per
capita)
—
.049
—
.084
—
2
.098
(.213)
(.162)
(.465)
Poverty rate (percent
below poverty line)
—
2
.000
—
2
.001
—
2
.005
(.002)
(.001)
(.004)
AFDC generosity ( t 2
15) (
3 1000)
—
.008
—
.002
—
2
.000
(.005)
(.004)
(.000)
Shall-issue concealed
weapons law
—
2
.004
—
.039
—
2
.015
(.012)
(.011)
(.032)
Beer consumption per
capita (gallons)
—
.004
—
.004
—
.006
(.003)
(.003)
(.008)
R
2
.938
.942
.990
.992
.914
.918
The dependent variable is the log in the per capita crime rate named at the top of each pair of columns.
The rst column in each pair presents results from speci cations in which the only additional covariates are
state- and year- xed effects. The second column presents results using the full speci cation. The data set is
comprised of annual state-level observations (including the District of Columbia) for the period 1985–1997.
The number of observations is equal to 663 in all columns. State- and year- xed effects are included in all
speci cations. The prison and police variables are once-lagged to minimize endogeneity. Estimation is
performed using a two-step procedure. In the rst step, weighted least squares estimates are obtained, with
weights determined by state population. In the second step, a panel data generalization of the Prais-Winsten
correction for serial correlation developed by Bhargava et al. [1982] is implemented. Standard errors are in
parentheses. Data sources for all variables are described in the Data Appendix.
404
QUARTERLY JOURNAL OF ECONOMICS
of abortion. One additional abortion is associated with a reduction
of 0.23 property crimes, 0.04 violent crimes, and 0.004 murders
annually when a cohort is at its peak crime age. Comparing these
estimates to average criminal propensities among 18 –24 year
olds, those on the margin for being aborted are roughly four times
more criminal. These estimates are roughly consistent with, but
somewhat larger than, the back-of-the-envelope predictions in
Section III.
The other coef cients in the model appear plausibly esti-
mated. The elasticities of incarceration and police with respect to
crime all carry the expected sign, with prison associated with
signi cant reductions in property crime and murder, and police
associated with signi cant reductions in murder.
28
A higher state
unemployment rate is associated with signi cant increases in
property crime, but not violent crime, consistent with previous
research [Freeman 1995]. The three other measures of state
economic conditions—per capita income, the poverty rate, and
AFDC generosity (lagged fteen years to roughly correspond with
the early years of life of the current teenagers) do not systemat-
ically affect crime. Shall-issue concealed carry laws appear to
signi cantly increase the amount of property crime, but have no
effect on violent crime or murder. Finally, beer consumption is
weakly linked with higher crime rates, but never signi cantly so.
Table V investigates the sensitivity of the abortion coef -
cients to a range of alternative speci cations. We take the spec-
i cations with the full set of controls in Table IV as a baseline.
The abortion coef cients from those regressions are reported in
the top row of Table V. Each row of the table represents a
different speci cation. The sensitivity of the results to large
states (since the regressions are population weighted) and states
with very high or low abortion rates is examined rst. Removing
New York reduces the estimates for violent crime and murder,
while eliminating California increases the abortion coef cient for
those two crime categories. Dropping Washington, DC, which is
an extreme outlier (with an abortion rate over four times the
national average) increases the estimated impact of abortion.
28. The estimated effects of incarceration are consistent with previous cor-
relational panel-data studies (e.g., Marvell and Moody [1994]). The prison coef -
cients obtained here are approximately the same magnitude as Levitt [1996] nds
when correcting for the endogeneity of the prison population using prison over-
crowding litigation as an instrument. Levitt [1997] nds a negative impact of
police on crime using electoral cycles in large cities as an instrument for the size
of the police force.
405
LEGALIZED ABORTION AND CRIME
Dropping all three of those high abortion states leads to higher
estimates across the board, suggesting that the crime-reducing
impact of abortion may have decreasing returns.
Omitted variables may also be a concern in the regressions
given the relatively limited set of covariates available. One crude
way of addressing this question is to include region-year interac-
tion terms in an attempt to absorb geographically correlated
TABLE V
S
ENSITIVITY OF
A
BORTION
C
OEFFICIENTS TO
A
LTERNATIVE
S
PECIFICATIONS
Speci cation
Coef cient on the “effective” abortion rate
variable when the dependent variable is
ln (Violent
crime per
capita)
ln (Property
crime per
capita)
ln (Murder
per capita)
Baseline
2
.129 (.024)
2
.091 (.018)
2
.121 (.047)
Exclude New York
2
.097 (.030)
2
.097 (.021)
2
.063 (.045)
Exclude California
2
.145 (.025)
2
.080 (.018)
2
.151 (.054)
Exclude District of Columbia
2
.149 (.025)
2
.112 (.019)
2
.159 (.053)
Exclude New York, California,
and District of Columbia
2
.175 (.035)
2
.125 (.017)
2
.273 (.052)
Adjust “effective” abortion rate
for cross-state mobility
2
.148 (.027)
2
.099 (.020)
2
.140 (.055)
Include control for ow of
immigrants
2
.115 (.024)
2
.063 (.018)
2
.103 (.047)
Include state-speci c trends
2
.078 (.080)
.143 (.033)
2
.379 (.105)
Include region-year interactions
2
.142 (.033)
2
.084 (.023)
2
.123 (.053)
Unweighted
2
.046 (.029)
2
.022 (.023)
.040 (.054)
Unweighted, exclude District of
Columbia
2
.149 (.029)
2
.107 (.015)
2
.140 (.055)
Unweighted, exclude District of
Columbia, California, and
New York
2
.157 (.037)
2
.110 (.017)
2
.166 (.075)
Include control for overall
fertility rate (t 2
20)
2
.127 (.025)
2
.093 (.019)
2
.123 (.047)
Long difference estimates using
only data from 1985 and 1997
2
.109 (.054)
2
.077 (.034)
2
.089 (.077)
Results in this table are variations on the speci cations reported in columns (2), (4), and (6) of Table IV.
The top row of the current table is the baseline speci cation that is presented in Table IV. Except where
noted, all speci cations are estimated using an annual, state-level panel of data for the years 1985–1997.
Standard errors (in parentheses) are corrected for serial correlation using the Bhargava et al. [1982] two-step
procedure for panel data. The speci cation that corrects for cross-state mobility does so by using an effective
abortion rate that is a weighted average of the abortion rates in the state of birth for fteen year-olds residing
in a state in the PUMS 5 percent sample of the 1990 census. Controls for the ow of immigrants are derived
from changes in the foreign-born population, based on the decennial censuses and 1997 estimates, linearly
interpolated. Region-year interactions are for the nine census regions.
406
QUARTERLY JOURNAL OF ECONOMICS
shocks. The abortion coef cients are not substantially affected by
this approach.
Since we are measuring the effect of abortions in a state on
crime in that state up to a quarter century later, the issue of
cross-state mobility should be considered. Theoretically, the pres-
ence of such cross-state movements will tend to systematically
bias the abortion coef cient toward zero since the true effective
abortion rate is measured with error by our proxy that ignores
mobility. In order to adjust for migration, we determined the
state of birth and state of residence for all fteen year-olds in the
1990 PUMS 5 percent sample. Using this information, we recal-
culated effective abortion rates as weighted average abortion
rates by the actual state of birth of fteen year-olds residing in a
state. For all three crime categories the estimated impact of
abortion increases with the migration correction, although the
changes are not large.
We perform a range of other sensitivity checks. Controlling
for the ow of immigrants to a state somewhat reduces the
estimated effect of abortion on crime (particularly for property
crime), but it does not change their signi cance. When we include
state-speci c time trends, the estimates change somewhat errat-
ically, and the standard errors double for murder and property
crime and triple for violent crime. Unweighted panel data regres-
sions (as opposed to population weighted) yield sharply smaller
coef cients, but this is exclusively due to Washington, DC as an
outlier (owing in all likelihood to mismeasurement in the DC
abortion rate). Excluding District of Columbia alone, or District of
Columbia in combination with California and New York, leads to
coef cients from the unweighted regressions that are greater
than the baseline estimates.
Including controls for lagged changes in overall fertility rates
for the same era as our abortion measures has almost no impact
on our estimated coef cients. Regressions using only the 1985
and 1997 endpoints of our sample (“long-differences”) yield coef-
cients similar to, although somewhat smaller than, the baseline
coef cients for the overall panel.
V. T
HE
I
MPACT OF
A
BORTION ON
A
RRESTS BY
A
GE OF
O
FFENDER
The preceding section highlighted a strong empirical corre-
lation between abortion rates after Roe v. Wade and crime
changes in recent years. In this section we explore the extent to
407
LEGALIZED ABORTION AND CRIME
which arrest patterns substantiate a possible causal interpreta-
tion of these results. In particular, if legalized abortion is the
reason for the decline in crime, then one would expect that de-
creases in crime should be concentrated among those cohorts born
after abortion is legalized.
29
Testing that hypothesis is complicated by the fact that the
age of criminals is not directly observable. The age of arrestees,
however, is reported.
30
Thus, we can analyze whether arrests by
cohort are a function of the abortion rate.
The basic speci cations used to explain state arrest rates by
age category are identical to the crime regressions in the preced-
ing section, except that the dependent variable is the (natural log
of the) arrest rate per capita for those under age 25 rather than
the overall crime rate for all ages, and 1997 is excluded from the
sample because the necessary arrest data are not yet available.
31
Results from the estimation are reported in columns 1–3 of Table
VI. Two speci cations per crime category are presented: the top
row of results just includes the effective abortion variable and
year- and state- xed effects, while the bottom row adds to these
the remaining covariates that were used in Table IV above. Be-
cause the dependent variable is denominated by the population
under age 25, the abortion coef cients only re ect changes in
arrest rates per person. If the impact of abortion was solely
through changes in cohort size, then the per capita speci cations
we run would yield zero coef cients on the abortion variable. In
all six cases, lagged abortion rates are associated with decreases
in arrests per capita by those under the age of 25, with estimates
29. It is possible that crime by older cohorts may be affected indirectly by
abortion. For instance, if there are fewer criminals in younger cohorts, this may
increase additional criminal opportunities for older individuals (particularly in
activities such as drug distribution where there may be easy substitutability). On
the other hand, to the extent that lower crime by the young increases the criminal
justice resources available per older criminal [Sah 1991], crime among older
cohorts may also fall. Moreover, as noted above, if abortion results in smaller
family sizes and a concomitant increase in parental resources per child, the effect
of legalization could be observed in crime reductions for older siblings. All of these
effects are likely to be of second-order magnitude, however.
30. Arrest data may not accurately re ect criminal activity for a number of
reasons. Greenwood [1995] argues that juvenile crime is more likely to be com-
mitted in groups so that the arrest frequency of juveniles overstates the true
fraction of crime they commit. Also, if there are differences across criminals in
avoiding detection, arrests will be skewed toward the less pro cient criminals.
31. We use an age cutoff of 25 because it is approximately the age of the
oldest cohorts affected by legalized abortion. Arrest data are available by single
year of age up to age 24, but only in ve-year groupings thereafter. The results
presented are not sensitive to small perturbations of the age groupings.
408
QUARTERLY JOURNAL OF ECONOMICS
T
A
B
L
E
V
I
T
H
E
I
M
P
A
C
T
O
F
A
B
O
R
T
IO
N
R
A
T
E
S
O
N
A
R
R
E
S
T
S
B
Y
A
G
E
(A
L
L
V
A
L
U
E
S
IN
T
H
E
T
A
B
L
E
A
R
E
C
O
E
F
F
IC
IE
N
T
S
O
N
T
H
E
E
F
F
E
C
T
IV
E
A
B
O
R
T
IO
N
R
A
T
E
(3
10
0)
,
O
T
H
E
R
C
O
E
F
F
IC
IE
N
T
S
A
R
E
N
O
T
R
E
P
O
R
T
E
D
)
S
pe
ci
ca
ti
on
ln
(a
rr
es
t
pe
r
pe
rs
on
,u
nd
er
ag
e
25
)
ln
(a
rr
es
ts
pe
r
pe
rs
on
,a
ge
25
+
)
ln
(a
rr
es
ts
pe
r
pe
rs
on
,u
nd
er
ag
e
25
)
m
in
us
ln
(a
rr
es
ts
pe
r
pe
rs
on
,
ag
e
25
+
)
V
io
le
n
t
cr
im
e
P
ro
pe
rt
y
cr
im
e
M
ur
de
r
V
io
le
n
t
cr
im
e
P
ro
pe
rt
y
cr
im
e
M
u
rd
er
V
io
le
n
t
cr
im
e
P
ro
pe
rt
y
cr
im
e
M
u
Dostları ilə paylaş: |