Do community characteristics influence environmental outcomes? Evidence fro the Toxics Release Inventory.
Cason, Timothy N.
1. Introduction
The traditional methods of command and control regulation have been
ineffective at worst and costly at best. Recognizing the need to make
regulations more flexible, in the past decade, Congress and regulators
have started to favor innovative and more market-based approaches to
regulation. The use or proposed use of tradable permits for controlling
acid rain and more recently for mitigating global warming exemplifies
this trend toward more flexible and market-oriented approaches. The use
of public information is yet another innovative environmental policy
tool. While economists pushed for the adoption of a tradable permits
approach by appealing to its cost effectiveness, policy makers adopted
public information disclosure without prodding by economists. Congress
was inspired by an industrial accident in Bhopal, India, when it passed
the Emergency Planning and Community Right-to-Know Act (EPCRA) in 1986.
EPCRA requires all manufacturing facilities to make public their
releases of over 320 toxic chemicals. The underlying premise of public
disclosure as an environmental policy tool is that public knowledge of
pollution can engender effective and informed participation by various
constituencies to exert pressure on manufacturing facilities to improve
their environmental performance.
Public knowledge of environmental data can be used by consumers to
boycott products or by investors to penalize large polluters (Hamilton
1995b; Konar and Cohen 1997). Neighborhood characteristics may also
influence enforcement actions by regulators.(1) This paper analyzes the
role of communities in influencing environmental outcomes. We examine
the potential impact of public disclosure on the environmental
performance of facilities by studying how community characteristics such
as race and gender, economic status, and variables expected to capture
political action influence subsequent toxic releases. A number of
studies have concentrated on the relationship between race and
environmental outcomes to determine the extent of environmental
injustice.(2) In the present paper, we find evidence of environmental
injustice and we also examine the effects of other community
characteristics in influencing environmental results.
We combine the Toxics Release Inventory data with demographic data
from the 1990 U.S. Census. We use neighborhood characteristics (at the
zip code level) to explain toxic releases in 1993, controlling for
releases in 1990. Releases in a particular year are determined
simultaneously with the demographic characteristics of a neighborhood,
and they change over time for a variety of reasons, including facility
relocation, expansion, and downsizing, as well as in response to
community characteristics. Because the releases in 1993 are determined
after the demographic characteristics were determined in 1990, it is
reasonable to treat the demographic characteristics as exogenous with
respect to these later releases.
We first analyze the location of manufacturing facilities in a
particular neighborhood using a sample selection model. This first stage
relates the likelihood that a neighborhood experiences any toxic
releases to the characteristics of that neighborhood. We then attribute
the level of emissions in 1993 to the demographic and socioeconomic characteristics of the neighborhood in 1990. We conduct the analysis for
the entire U.S. as well as specific geographical regions.
The analysis captures three distinct aspects of the communities to
assess the role that each plays in influencing environmental outcomes.
First, we consider the racial, immigrant, and gender composition of
neighborhoods. Our results indicate that a larger percentage of nonwhite residents may be associated with a higher level of releases in the
southeastern states, primarily in nonurban zip codes.(3) We also examine
the relationship between economic characteristics and environmental
outcomes. Economic factors (such as median income and unemployment
rates) have a significant impact on toxic releases, particularly in the
southeastern states. Finally, we examine variables expected to be
associated with the political activity and preferences of the community
and its ability to collectively oppose firms that may harm the local
environment. While we use voter turnout data and data on environmental
initiative voting for California, for the rest of the U.S., we use
demographic variables as proxies to represent a community's
propensity for collective action and its political preferences. Our use
of demographic variables instead of voter turnout to proxy collective
action for the national sample differs from much of the existing
literature. These variables appear to influence environmental outcomes
mainly in nonurban areas.
2. Theoretical Framework and Hypotheses Construction
Hamilton (1995a) presents a careful description of three
alternative explanations for pollution patterns resulting from capacity
expansion plans for commercial hazardous waste facilities, and we adopt
his framework to motivate our empirical hypotheses. The three
explanations are (i) race/gender related, (ii) the Coase theorem, and
(iii) the theory of collective action (Olson 1965). In the first
explanation, facility owners and operators consider the race and gender
composition of neighborhoods and increase releases in neighborhoods with
a greater minority (and perhaps immigrant) population or with a greater
fraction of female-headed households. In its pure form, this leads to
greater releases in some neighborhoods that otherwise (from a pure
profit-maximizing standpoint) would not experience greater releases.
Alternatively, in a world without transaction costs, the Coase
theorem suggests that releases will increase in neighborhoods in which
the releases will do the least damage. According to this hypothesis,
releases will be greater in neighborhoods with lower rent. Higher
incomes may also increase the costs of increased releases in a given
neighborhood.(4) Rental values and income levels are correlated with
education and race, so releases could increase in minority neighborhoods
merely because they affect lower valued property and lower wage earners.
Our analysis attempts to sort out these alternative explanations.(5)
Finally, firms may decide to increase releases in a given
neighborhood because they face less (political) collective action in
that neighborhood. Residents in different neighborhoods vary in their
ability to overcome free-rider problems and engage in collective action.
Again, this could result in outcomes that appear similar to the
race/gender-related explanation if, for example, minority or immigrant
neighborhoods are less politically active. To distinguish between these
explanations, we include some variables that are likely to affect
incentives to engage in collective action (such as the fraction of
households with children); and in a model based on California data only,
we include some direct measures of political action and environmental
preferences, specifically voter turnout and vote results on an
environmental initiative. While we can use voting data for California,
due to data limitations for other regions (discussed below), we rely on
a combination of demographic variables to proxy for collective action.
Strong correlations exist between many of our explanatory
variables, which creates a classic multicollinearity problem. This
problem has the potential to cause incorrect statistical inferences regarding individual coefficient estimates. This potential arises
because, although individual coefficient estimates are unbiased,
variance estimates are inflated due to the multicollinearity. To
sidestep this problem, we focus on joint tests of significance to test
the three alternative hypotheses. In particular, we employ the Wald test in a series of hypothesis tests of the form [H.sub.0]: Rb = r, where R
is a matrix that creates a joint test that specific elements in the
parameter vector b are all equal to zero (r is a vector of zeros). We
choose three different R matrices to test each of the three explanations
described above.
To summarize, these alternative theories predict that only certain
variables should explain toxic releases. The race/gender hypothesis
posits the null that factors such as race, gender, and the foreign-born
composition of a neighborhood do not predict releases. Rejection of the
null implies that these factors are important and supports the
race/gender hypothesis. The economic (Coase theorem) hypothesis
postulates the null that economic factors such as income levels, rental
values, vacancy rates, unemployment rates, and the proportion of poor
households do not explain changing release patterns. Rejection of this
null supports what we shall refer to as the economic/Coasian explanation
for changing release patterns. Last, the political/collective action
hypothesis posits the null that variables related to the political
action propensity of local residents do not predict releases. In
addition to voter turnout and expressed preferences through
environmental initiative voting (for California only), we include
variables such as age, education, and the number of households with
children.(6) These factors can be reasonably expected to influence the
incentives and tendency to engage in political action (e.g., see Filer,
Kenney, and Morton 1993).(7) Rejection of this political/collective
action null supports the hypothesis that such variables associated with
the political activity of local residents influence environmental
outcomes.
We focus on hypothesis tests for these three sets of variables as a
group and then also interpret the significant individual variable
effects. We recognize that our classification of variables under the
different hypotheses is not exact. For example, the proportion of
foreign-born residents may be associated primarily with the race/gender
hypothesis, but it may also be considered a factor that influences the
extent of community activism. Our presentation of individual coefficient
estimates permits the reader to assess the implications of alternative
groupings.(8)
3. Data and Model Specification
We combine the Toxics Release Inventory with the U.S. Bureau of the
Census data and determine the relationship between the releases in a
particular zip code and demographic attributes of that zip code. We use
data for nearly 30,000 zip codes, including all zip codes with
residential population according to the U.S. Census.
The Toxics Release Inventory
Title III of the Superfund Amendments and Reauthorization Act
(1986) requires manufacturing establishments (Standard Industrial
Classification [SIC] 20-39) to report their releases and transfers of
320 toxic chemicals. The Act requires facilities that manufacture or
process more than 25,000 pounds or use more than 10,000 pounds of any of
the reportable chemicals to submit a toxics release inventory (TRI)
report (U.S. EPA 1992). Our main results aggregate air, land, water, and
underground injection releases and do not include toxic chemical
transfers. (The end of section 4 briefly discusses models estimated for
toxic transfers and releases disaggregated by release medium.) Arora and
Cason (1995) compare two methods of chemical aggregation, one weighting
all chemicals equally and another that accounts for the chemicals'
different toxicities. Most of the toxic chemicals that are widely used
have similar toxicity (U.S. EPA 1989), so the results were not sensitive
to the weighting scheme.(9) Therefore, we simply aggregate the chemicals
and employ equal weights.
In addition to the environmental data, each facility reports its
location, primary SIC code, and parent company. We employ the zip code
of the facility location to merge these data with the Census data. Note
that our measure of environmental outcomes is based on releases and not
exposures. Exposures differ from releases due to the geographic
dispersion of households and releases within each zip code. We do not
attempt to analyze exposures here as it would entail very elaborate
mappings using the census tract and a geographical information system.
Given the scope of our study (for the entire U.S.), this exercise is
prohibitively expensive. Note also that, since the analysis is conducted
at the zip code rather than at the firm level, it is not possible to
control for industry since multiple facilities (from multiple
industries) exist in many zip codes.
The Census Data
The Sourcebook of Zip Code Demographics compiles the 1990 U.S.
census separately for every residential zip code. Table 1 summarizes the
variables we employ. All variables are for 1990 unless noted otherwise.
Using the zip code level of aggregation is most straightforward and
practical given this broad-based study of the entire U.S. Some spatial
correlation of releases and demographic characteristics undoubtedly
exists, but numerically adjacent zip codes are often not adjacent
geographically. Therefore, accounting for this correlation would also
require a detailed geographic information system. This is more practical
for less broad studies, such as the analysis of health risks in
Pennsylvania's Allegheny County conducted by Glickman and Hersh
(1995).
Additional California Variables
We present results in Section 4.3 based on California zip codes
after adding two variables that we obtained only for California, voter
turnout and vote outcomes on a specific ballot proposition. These
variables are intended to capture the political activity and
environmental preferences of residents of different areas of the state.
Unlike the other zip code-specific demographic and economic
characteristics described above, these data are provided at the county
level.(10)
Table 1. Description of the Census Data
Variable Definition
FEMHEAD Percentage of family households with a female as the
head of the household
PCTFORN Percentage of foreign-born residents
PCTNONWT Percentage of nonwhite residents (Black, American
Indian, Asian/Pacific Islander, other)
PCTASIAN Percentage of residents classified as Asian/Pacific
Islander
PCTNONWA Percentage of nonwhite and non-Asian residents
(Black, American Indian, other)
VACANT Percentage of housing units that are vacant
(includes housing units that were temporarily
occupied at the time of the census, i.e., seasonal or
recreational units, units for sale or rent, units
rented or sold but not occupied, and new units not
occupied)
MDINCOME Median household income (computed from the nine
intervals in the reported distribution of income)
POOR Percentage of residents living in poverty (poverty
status calculated in 1989; poverty thresholds
calculated from the number of persons in the family
and the number of related children under 18 years
[average threshold for a family of four in 1989 was
$12,674; for two persons, it was $8,076])
MEDROHU Median rent paid in renter-occupied housing units
(dollars per month)
UNEMP Unemployment rate (in percent)
BACH Percent of population (over 25 years of age) with
bachelor's degree
CARPOOL Percentage of workers 16 years and older who journey
to work by carpool
HHWKIDS Percentage of family households with children (below
18 years of age)
MANU Percentage of workers employed in manufacturing
industries
MEDAGE Median age of residents
RENTPCT Percent of occupied housing units that are renter
occupied (contract rent is the monthly amount,
regardless of any utilities, furnishings, or fees,
that may be included; renter-occupied units exclude
single-family homes on more than 10 acres and renter
units occupied without payment of cash rent)
TOTPOP Total number of residents in an area (residence
refers to the usual place where a person lives, not
necessarily the legal residence)
PCTURB Percentage of residents living in an urban area
(urban includes population of places with at least
2500 persons and urbanized area; urbanized area
consists of one or more places with a minimum
population of 50,000 people plus adjacent area with
a density of 1000 persons per square mile)
The Sourcebook of Zip Code Demographics provides data on all
residential neighborhoods in the region. All variables are for 1990
in 1990 $.
We employ voter turnout from 1990, the same year as the census
data. The turnout measure is the total votes cast in the county in the
1990 general election as a percentage of the total 1990 population in
the county. Traditional measures of voter turnout use either eligible or
registered voters in the denominator. We chose total population for our
denominator so that our measure captures not only the political activity
of the residents but also the level of enfranchisement of the
population. Our version differs from traditional measures because the
proportion of children, immigrants, and others ineligible to vote varies
across counties. Our logic is that the political influence of a
population declines if either the eligible voters in that population
tend to vote less often or more members of that population are
ineligible to vote. The measure we construct combines these two
components of political activity.
The proposition we chose to represent environmental preferences is
Proposition 128, popularly known as Big Green, which was defeated in the
1990 general election. The most notable feature of the proposition was a
ban on the use of pesticides that cause cancer or reproductive harm,
which would have eliminated about 350 chemicals (out of about 2300
currently in use). The initiative was also wide-ranging, including a ban
on new offshore oil drilling, increased water quality standards, $300
million in bonds to buy redwoods, and a proposal to reduce greenhouse
gas emissions by 40%. Clearly, an increase in the proportion of voters
voting for proposition 128 in a region indicates more proenvironment
preferences in that region.(11)
Model Specification
Our goal is to explain the toxic chemical releases in 1993 using
the socioeconomic characteristics and 1990 releases of zip code
neighborhoods. Most prior research investigating the relationship
between demographic variables and environmental outcomes fails to
recognize that neighborhood characteristics and environmental outcomes
are determined simultaneously. A facility locates in an area, increasing
the environmental risk and causing the land and housing values of that
area to decline. Residents that choose to live in that area may either
place a low value on the environment or may have a low income that
limits their ability to locate in a less environmentally degraded area.
Our strategy to avoid this endogeneity problem is to use 1990
demographic characteristics to explain releases after 1990. Increases in
releases occur from new facilities or expansion of existing facilities
after 1990, so the 1990 demographic characteristics are most likely
exogenous to these post-1990 firm decisions. We do acknowledge, however,
that our results are still subject to some (we believe minor)
endogeneity bias if residents are located in a given neighborhood in
1990 based on expectations of how releases will change after 1990.(12)
An immediate problem that arises in constructing the dependent
measure of toxic releases is that many neighborhoods do not have any
toxic chemical releases in either 1990 or 1993. In particular, 72% of
the nearly 30,000 zip codes with demographic data experienced no toxic
chemical releases according to the TRI in these years. Simply excluding
these zip codes from our analysis would lead to a potentially
significant sample selection bias since these zero-release neighborhoods
are obviously not a random sample of neighborhoods. We therefore employ
a two-stage maximum likelihood sample selection model so that our
estimates of the releases equation account for the nonrandom selection of the neighborhoods with any toxic chemical releases (Heckman 1979).
The first stage estimates a probit model, with the dependent variable
equal to one if the neighborhood experienced any toxic releases in 1990
or 1993 (and zero otherwise). The second stage estimates our main model
(with 1993 releases as the dependent variable), adding the estimated
likelihood of any releases for that zip code calculated from the first
stage (or what is commonly referred to as the inverse Mill's
ratio).
The second econometric issue that arises is heteroscedasticity. Zip
code boundaries are designed to facilitate the delivery of mail rather
than group the population into roughly equal-sized neighborhoods;
consequently, the number of residents in each zip code varies
considerably.(13) More populous zip code neighborhoods were more likely
to experience toxic releases, and a Breusch and Pagan (1980) Lagrange
multiplier test strongly rejects homoscedasticity at better than the p =
0.001 significance level.(14) To account for this heteroscedasticity in
the estimates, we assume that the standard deviation of the error in
each observation is proportional to the residential population of the
zip code neighborhood. This assumption is translated into the
econometric estimation by weighting each observation by the inverse of
the square root of residential population.
Table 2 presents summary statistics for the analysis variables.
Presented are a summary of the socioeconomic characteristics of the zip
code neighborhoods with no toxic releases in either 1990 or 1993 and
this same information for the neighborhoods with positive releases in
either 1990 or 1993.
4. Results
Table 3 presents total toxic releases reported in the TRI for 1990
and 1993. Nationally, releases declined by 6.5%. The table also shows
that the decline in releases was more modest in the southeastern U.S., a
region comprised of 11 states (Alabama, Arkansas, Florida, Georgia,
Kentucky, Louisiana, Mississippi, North Carolina, South Carolina,
Tennessee, and Virginia). This difference, in part, motivated us to
estimate models separately for this region. We present these regional
estimates following the full sample estimates in the next subsection.
Full Sample Estimates
The Stage 1 portion of Table 4 contains the probit sample selection
parameter estimates, and the Stage 2 section contains the parameter
estimates that explain the toxic releases in 1993. Column (1) presents
estimates based on all zip codes in the U.S. with any residential
population. No causality should be inferred from the Stage I sample
selection estimates; as discussed above, the existence of toxic releases
in a particular neighborhood undoubtedly influences the decision of many
residents to locate in that neighborhood and therefore partially
explains its socioeconomic characteristics. The sample selection
equation is used merely to retrieve the inverse Mill's ratio, so in
this discussion, we focus on the Stage 2 estimates.(15)
Due to differences in state regulations and economic conditions,
releases could differ across states. We therefore include 49 state dummy
variables but suppress them in the tables to conserve space. The omitted
dummy variable is for the most populous state (California). Forty-six of
the 49 state dummy variables are not significantly different from zero
(at the 5% level), indicating that fixed state effects are usually not
important.(16) The remaining estimates in the Stage 2 portion of Table 4
are marginal within-state impacts of the demographic characteristics
because across-state differences are captured by the fixed effect state
dummies.
We have no prior that suggests only a linear relationship between
any of our explanatory variables and releases, and some case studies
(Bullard 1983; U.S.
GAO 1983) have found negative environmental outcomes only when
certain factors (such as the nonwhite population) are very high in the
local population. For these reasons, we include squared terms for many
of the variables. Preliminary estimates indicated no significant
nonlinear relationships for certain variables, so Table 4 presents
estimates without squared terms for those variables when the preliminary
estimates indicated a squared term coefficient that was only a small
fraction of its standard error. We also included cubic terms in
preliminary regressions; these were all insignificant except for median
income, which we therefore include (MEDINCCU). Grossman and Krueger
(1995) have identified an inverse U-shaped relationship between income
and releases based on a panel of cities in different countries, without
controlling for other factors. The interpretation of this environmental
Kuznet's curve is that an increase in economic activity is
accompanied by deterioration in environmental quality, but beyond a
turning point, as income increases, the demand for a cleaner environment
reduces the level of pollution. Our cubic functional form for median
income permits a sufficiently nonlinear relationship to represent this
inverse U-shaped environmental Kuznet's curve, and our estimates
are consistent with an inverse U-shape even after accounting for the
other explanatory variables that may influence releases.
Table 5 presents the results of Wald tests for the hypotheses that
our three classes of variables are each jointly insignificant. Tests
based on the entire U.S. dataset are shown in column (1). (We discuss
the other columns after presenting the regional estimates.) The data
reject the null hypotheses that race/gender variables and economic
variables do not influence toxic releases. The data fail to reject the
null hypothesis that our set of political/collective action variables
does not influence releases, however. We next consider the individual
coefficient estimates in the Stage 2 portion of Table 4.
The impact of the variables with nonlinear specifications depends
on the level of the variables. Figure 1 illustrates the estimated impact
for these nonlinear variables to aid in their interpretation.(17) In all
cases, the figure only displays the estimated impact for the range of
the explanatory variable between the first and 99th percentile in the
data. For example, we only display the impact of POOR below 50% because
the 99th percentile (across zip codes) of the percentage of residents
living in poverty is approximately 50%.
Consider first the race/gender variables. Releases are estimated to
increase with the percentage of nonwhite population once this percentage
exceeds the turning point of approximately 22%. By contrast, releases
generally fall with increases in the percentage of female-headed
households, contrary to one possible view of environmental
discrimination. Many of the economic variables also impact releases.
Figure 1 shows that releases increase with increasing median household
income. As noted above, however, the estimates are not inconsistent with
the inverse U-shaped environmental Kuznet's curve presented by
Grossman and Krueger (1995) because of the variance in our parameter
estimates.(18) Neighborhoods with a greater percentage [TABULAR DATA FOR
TABLE 2 OMITTED] of residents living in poverty (POOR) experience
greater releases than less poverty-stricken neighborhoods. Finally,
neighborhoods with high unemployment (above about 10%) experience fewer
releases than low unemployment neighborhoods, as do neighborhoods with
high residential vacancy rates (see Stage 2 in Table 4). These last two
effects are due probably to generally depressed local economic
conditions.
Southeastern U.S. Estimates
The remaining columns of the Stage 2 portion of Table 4 present
estimation results when segmenting the U.S. into different regions. The
estimates shown in column (3) are for the 11 southeastern states defined
previously, and the estimates shown in column (5) are for the remaining
39 states.(19) We were motivated to segment the U.S. into geographic
areas to capture potential regional differences influencing
environmental outcomes.
Many parameter estimates differ in the two regions. In the South,
the nonwhite population percentage significantly affects releases, while
this variable is insignificant outside the South. Figure 2 illustrates
that our model estimates for the South imply substantially higher
releases for those neighborhoods with a large nonwhite population. (The
non-South estimated impact is shown for comparison, although this
variable is not statistically significant in the non-South dataset.) The
other economic variables identified as significant at the 5% level in
the full sample are also significant in the South subsample with
identical signs. These economic variables are insignificant in the
non-South subsample, however.
The Wald tests shown in columns (2) and (3) of Table 5 indicate
that the southeastern U.S. data reject the null hypotheses that the
race/gender variables and the economic variables do not affect releases.
The data do not reject the hypothesis that the set of
political/collective action variables does not affect releases for the
South. None of the three null hypotheses are rejected in the non-South
dataset.
Table 3. Total Toxic Releases Reported in the Toxics Release
Inventory (in Millions of Pounds)
Year Entire U.S. South Non-South
1990 3905 1518 2387
1993 3653 1491 2161
Percentage Change -6.5% -1.8% -9.5%
[TABULAR DATA FOR TABLE 4 OMITTED]
[TABULAR DATA FOR TABLE 5 OMITTED]
California Estimates
The results based on the subsample of California zip codes are
shown in column (7) of Table 4. This specification differs from the
previous models in two ways. First, we specify the race variables
slightly differently. As mentioned above, the correlation between the
percentage of nonwhite residents and certain economic variables is
substantial. For example, in the overall sample, the correlation
coefficient between the percentage of nonwhite residents and the
percentage of households living in poverty is 0.46. Fortunately, the
data indicate that one minority group, Asians, does not have this high
correlation with economic characteristics. Unfortunately for our
purposes, the percentage of Asian residents nationally is quite small,
averaging 1.2% across zip codes. This makes identifying an independent
impact for this racial group unlikely based on the entire U.S. sample.
However, the percentage of Asian residents is significantly greater
in more racially diverse California, averaging 6.4% across zip codes.
This percentage also varies substantially across zip codes in California
and is uncorrelated with the percentage of residents living in poverty
(the estimated correlation coefficient is -0.01). Therefore, the
California specification in column (7) separates the nonwhite population
percentage into two categories: percent Asian (PCTASIAN) and percent
nonwhite and non-Asian (PCTNONWA). The results indicate whether an
independent Asian effect is evident in the release data and, due to the
nature of the data, this effect is orthogonal to our poverty measures.
The second difference in the California estimates is the addition
of two new variables: voter turnout (TURN90) and voting outcomes on
Proposition 128 (PCT4_128), a wide-ranging initiative to improve
environmental conditions. Voter turnout (defined as the percentage of
residents that cast votes in the 1990 general election) ranged from 15
to 42%, with a mean of 28% and a median of 27%. The percentage of
residents voting in favor of Proposition 128 ranged from 12 to 62%, with
a mean of 33% and a median of 32%. As discussed above, these variables
capture the political activity and environmental preferences of local
residents.
Similar to the non-South estimates, most of the variables in this
model based only on California are insignificant. The key results from
the California model are the following. First, the percentage of Asian
residents as well as all other race/gender variables do not explain
releases. Second, increased voter turnout has a negative but
statistically insignificant impact on releases. Third, vote outcomes on
Proposition 128 have no impact on releases. The Wald tests based on
California (column [4] of Table 5) indicate that none of the three joint
null hypotheses are rejected.
Nonurban Estimates
Due to land availability, population density, and other factors,
changes in release patterns may differ substantially between rural and
urban areas.(20) The demographic composition of nonurban neighborhoods
also varies considerably in different areas of the country. For example,
as we document below, racial minorities represent a large portion of
residents in some rural areas of the southeastern U.S., but elsewhere
minority residents are more commonly concentrated in urban areas. If
increases in toxic releases are more likely or less likely to be
economically feasible in nonurban areas, the environmental impact on
minority residents might differ across regions. The results previously
presented indicate that, in the southeastern states, neighborhoods with
a higher proportion of nonwhite residents are more likely to suffer from
an increase in toxic releases. This section investigates whether this
pattern could be due primarily to an increase in releases in nonurban
areas rather than to differences in neighborhood racial compositions. In
particular, Table 6 reports estimates of the same models shown
previously in Table 4 but for only nonurban zip codes. The key result
that releases are greater in neighborhoods with a greater concentration
of minority residents is stronger when considering only nonurban zip
codes.
We exclude the predominantly urban zip codes by dropping those in
which more than 90% of the residents live in an urban area.(21) The
average population of the 23,354 zip codes that satisfy this criterion
is 4671, compared to an average population of 23,306 for the 5978
predominantly urban zip codes. Nonwhite residents comprise more than 20%
of the population in about 37% of the nonurban zip codes in the South;
by contrast, nonwhite residents comprise more than 20% of the population
in only about 7% of the nonurban zip codes outside the South. This
discussion will focus on the Stage 2 results of Table 6 as well as on
the nonurban Wald test statistics reported in Table 7.
The results for the nonurban zip codes are somewhat different from
the full sample results. Consider first the race/gender variables. As in
the full sample, the percentage of nonwhite residents affects releases
primarily in the South. However, Figure 2 illustrates that the estimated
increase in releases for predominantly nonwhite neighborhoods is more
pronounced in southern, nonurban areas. In (unreported) estimates for
urban zip codes in the South, the percentage of nonwhite residents does
not significantly affect releases. The evidence that minorities face
increased exposures is therefore confined to nonurban areas of the
South.
The second major difference in the nonurban sample is that many
political/collective action variables are significantly different from
zero. The Wald test statistics shown in Table 7 also [TABULAR DATA FOR
TABLE 6 OMITTED] [TABULAR DATA FOR TABLE 7 OMITTED] indicate that this
set of political/collective action variables significantly affects
releases in nonrural areas, contrary to the full sample tests shown in
Table 5. In the South, surprisingly, releases tend to be greater for
nonurban neighborhoods that contain a greater fraction of households
with children. The nonurban estimates for the South also indicate
marginally significant impacts of the percentage of residents employed
in manufacturing industries and the number of residents who carpool. The
nonurban estimates for the nonsouthern states (column 5 of Table 6,
Stage 2) indicate that releases are lower in neighborhoods with a higher
percentage of adults with bachelor's degrees. Finally, the nonurban
estimates for California indicate that releases are lower in
neighborhoods in which a higher percentage of workers use carpools.
In summary, these estimates based on only nonurban zip codes
suggest that residents in predominantly nonwhite, southern rural areas
were exposed to more toxic releases than their urban counterparts. The
results also indicate that our political/collective action variables
have a greater influence on releases in nonurban areas, which is an
intriguing finding that warrants future study.
Alternative Specifications
Here we briefly discuss several alternative model specifications,
although we do not report them in detail in order to conserve space.
The TRI reports transfers (or shipments) of toxic chemicals, which
are typically directed toward publicly owned treatment works (POTW). The
accounting of these transfers has been more accurate than the accounting
of releases, at least in the early years of the TRI. In recent years,
these off-site transfers have been growing dramatically. For example,
while toxic releases fell by 6.5% between 1990 and 1993 (see Table 3),
toxic transfers increased by more than 200% - from 1.16 to 3.86 billion
pounds. While this reflects an overall increase in the generation of
toxic chemicals, these transfers remove the toxic chemicals from the
local environment and are often associated with reduced local
environmental releases. Consequently, increases in transfers often
improve local environmental conditions, unlike increases in releases.
We were unable to find strong evidence that transfers are closely
related to the demographic and economic characteristics of the zip code
neighborhood surrounding manufacturing facilities. We estimated a set of
sample selection models similar to those shown in Table 4 except with
1993 transfers replacing releases as the dependent variable (and 1990
transfers replacing releases as a control explanatory variable). The
overall fit of the models was poor, as reflected in adjusted [R.sup.2]
statistics that were below 0.01 for the entire U.S., the South, and the
non-South datasets. Individual coefficient estimates were significantly
different from zero only rarely.(22)
We also investigated whether systematic initial underreporting or
overreporting of releases might be able to explain our finding that
releases tended to increase between 1990 and 1993 in nonurban, southern
zip codes with a high proportion of nonwhite residents. It is possible
but probably not likely that firms have a strong incentive to overreport
releases. Hamilton (1995b) provides evidence that publicly traded firms
that were cited by the media for having large toxic emissions
experienced a stock price reduction on average on the announcement day.
Some firms, however, might have underreported releases. Moreover, some
small firms initially may have failed to comply with reporting
requirements.(23) If these underreported releases varied systematically
by region (and with demographic or economic characteristics of the zip
codes), then our results could be biased.
To reduce the bias due to underreporting, we divided facilities
into three classes: (i) those with positive releases or transfers
reported in both 1990 and 1993; (ii) those with positive releases or
transfers only in 1990 (but no data reported in 1993); and (iii) those
with positive releases or transfers only in 1993 (but no data reported
in 1990). This last group might be nonreporting in 1990, and by 1993,
they had begun to comply with the TRI reporting requirements.(24)
We estimated the same models reported above on only the facilities
in group i (i.e., those reporting in both years) to determine if our
main conclusions continue to hold on a dataset with less potential bias
from underreporting. Our conclusions tend to be somewhat weaker, but
they hold up qualitatively. For the full U.S. dataset, the percentage of
nonwhite residents does not significantly affect releases, although this
variable continues to affect releases significantly in the southeastern
states estimates. The main difference in the results for this subsample
of facilities is that the percentage of residents who use carpools
significantly affects releases, and this makes the political/collective
action Wald test statistics significant in the entire U.S. estimates as
well as in the estimates for the southeastern states.
Finally, we also reestimated the models after disaggregating
releases by pollution media. Our main results in Table 4 are based on
total releases, which include releases to air, surface water,
underground injections and land. It is possible that race, economic, and
collective action influences affect these kinds of releases differently
due perhaps to community and regulator scrutiny that differs depending
on the type of pollution. About 45% of releases are to air so, not
surprisingly, the air release estimates generally parallel those in
Table 4. The main difference is that median income is not significant in
any of the air release estimates. In addition, in the air release model
estimated for the southeastern states, the estimated impact of the
percentage of nonwhite residents is much smaller in magnitude, although
it remains statistically significant. We also estimated separate models
for the releases to water, land, and underground injection, but our set
of economic and demographic characteristics fail to explain releases in
these media.(25)
5. Summary
This paper presents a reduced form statistical analysis of the
relationship between environmental outcomes and neighborhood
characteristics throughout the U.S. We also conduct regional regressions
within the U.S. to capture differences across geographic areas. Our
approach uses the level of toxic chemical releases in 1993 as the
measure of environmental performance, based on the Toxics Release
Inventory, and we control for 1990 releases. The 1990 U.S. Census
provides the data on neighborhood characteristics, and the analysis is
conducted at the zip code level. The goal is to distinguish between
three alternative explanations for differences in environmental outcomes
- race/gender influences, an economic (Coasian) explanation, and an
explanation based on political/collective action.
Many economic variables significantly impact releases for the
overall sample and within the southeastern states. The estimates based
on the entire U.S. indicate that releases increase as income increases,
but our estimates are also consistent with an inverse U-shaped
environmental Kuznet's curve (i.e., a reduction in releases with
increasing income once income exceeds some threshold). Releases also
tend to be lower in areas with high unemployment rates.
While the scope of our inquiry was much broader than a simple
search for environmental injustice, our most provocative finding is that
race appears to be an important determinant of releases in the South.
This result seems confined to nonurban areas, which contain high
concentrations of minority residents mainly in the South. This pattern
of increased releases in minority areas controls for many other economic
and collective action variables, and it is not observed outside the
South or in predominantly urban areas. This finding has important
implications for the debate on environmental equity and is consistent
with case study evidence.(26)
Our study differs from other studies on environmental injustice in
that it suggests a potential solution to correct environmental
inequities. We find that the variables that proxy collective action
significantly explain releases in the same areas where we find evidence
of environmental injustice - nonurban areas of the southeast. This
suggests that raising awareness and providing information to the
affected rural, southern communities may be a significant step in
reversing environmental injustice.
[TABULAR DATA FOR APPENDIX OMITTED]
We have benefited from helpful comments provided by seminar
participants at UC-Santa Barbara, the University of Southern California,
and Resources for the Future, conference participants at the European
Agricultural and Resource Economists Meeting in Lisbon, Portugal, the
editor, and two anonymous referees. We would like to thank David Austin,
Dallas Burtraw, Mark Cohen, Brian Kropp, Eduardo Ley, Vai-Lam Mui,
Wallace Oates, Ian Parry, Hilary Sigman, Jeff Wagner, Margaret Walls,
and Chris Wernstedt. We retain responsibility for any errors. Arora
gratefully acknowledges financial support from the Owen Graduate School
of Management Dean's Fund for Summer Research.
1 For an informational model of Occupational Safety and Health
Administration enforcement, see Scholz and Gray (1997).
2 For previous research, see Anderton et al. (1994), Bryant and
Mohai (1992), Bullard (1983, 1990), Goldman and Fritton (1994), and Been
(1994).
3 As documented in the Results section, only in the southeastern
states do racial minorities commonly represent a large proportion of
total residents in nonurban areas.
4 From the polluter's perspective, higher property values and
incomes increase the damage from releases because, in litigation,
injured parties could recover damages based on reduced property values.
In the case of adverse health impacts that limit work ability, the
injured parties could recover lost income.
5 This is a different point than stated by Been (1994). She argues
that releases in a neighborhood decrease property values, which then
attract minority populations. Econometrically, this suggests that
neighborhood characteristics may be endogenous to the determination of
releases. This is precisely why we use 1990 characteristics to explain
1993 releases (see below). Unlike Been (1994), our analysis uses rental
values rather than the value of owner occupied housing as a proxy for
property values.
6 Recall the incident at Love Canal, where an elementary school was
built on a toxic dump. That caused a public outcry when the chemicals
started seeping from the walls and affecting children.
7 Filer, Kenney, and Morton (1993) use variables such as education,
age, and income to explain voter turnout. In the set of
political/collective action variables, we also include several factors
that potentially affect or reflect local environmental preferences. We
include the percentage of residents who carpool because carpooling for
some may represent a contribution to a community public good or
proenvironmental preferences. The percentage of residents employed in
manufacturing industries and the percentage of residents who rent rather
than own their residences are also included in the set of political
action variables because these variables could influence the incentives
for residents to oppose expansions in local manufacturing facilities.
8 We should also note that. because of the inexact variable
classification and the multicollinearity present in these demographic
data, our Wald tests of joint significance of each set of variables
could be sensitive to alternative groupings.
9 Indeed, EPA has not assigned risk scores to many of the less
toxic chemicals on the TRI list, which makes differential weighting
problematic.
10 It would be possible, in principle, to collect voter turnout
data for every state; unfortunately, such data are compiled at the state
rather than federal level. Moreover, we have not identified a
compilation of national voter turnout data with zip code or numerical
county identifiers that is suitable for merging with the zip code or
county identifiers on the census database. The California Secretary of
State also compiles voting data at different levels of aggregation, such
as by congressional district, but they are not compiled by zip code. For
our analysis, we merge the county-based voting data with the zip
code-level demographic and socioeconomic data. We thank John Matsusaka
for generously providing these voting data.
11 See Kahn and Matsusaka (1997) for a comprehensive analysis of
voting behavior on a large sample of California initiatives.
12 Another approach might be to determine environmental performance
by measuring something like the level of releases per $1000 in
value-added for these manufacturing facilities. This would involve
merging detailed data from the manufacturing census, an ambitious avenue
of inquiry that we leave for future research.
13 A number of entirely industrial or commercial zip codes have no
residents, so they have no demographic data and cannot contribute to our
analysis. The most populous zip code had 112,046 residents.
14 This test statistic is simply one half of the explained sum of
squares in the regression of [Mathematical Expression Omitted] on the
vector of explanatory variables. We conducted this test based on the
second stage regression that includes the inverse Mill's ratio to
account for sample selection.
15 As shown at the bottom of Table 4, Stage 2, the inverse
Mill's ratio sample selection term is never significant. This
suggests that any sample selection bias is probably small, which we
confirm with ordinary least squares estimates shown in the appendix. We
nevertheless focus on the sample selection model shown in Table 4
because it is reasonable to expect a selection bias. at least in theory.
16 The three significant state dummy variables are for Kansas
(estimate = -503.8), Louisiana (estimate = 1234.3), and Utah (estimate =
-1194.3).
17 Figures 1 and 2 are adjusted for the likelihood of a
neighborhood experiencing any releases, from the Stage 1 models.
18 For example, if the MEDINCSQ estimate fell by only -0.30 (only
one third of its standard error) to -2.71, the income-releases
relationship would exhibit an inverse U-shape. We also explored the
relationship between releases and median income, not controlling for all
of the other demographic factors in our model. This is analogous to the
reduced form estimates provided by Grossman and Krueger (1995) for some
developing countries. These estimates (not reported here) indicate a
standard inverse U-shape, with a relatively low turning point at
approximately the median income of $20,000.
19 In the non-South regression, the omitted state is again
California. In the South regression, the omitted state is Florida. Nine
of the 10 remaining state dummies in the South regression are
insignificant (Louisiana is significant with an estimate of 1148.8).
20 We are grateful to the editor for encouraging us to investigate
the changing release patterns of nonurban areas.
21 For census purposes, an urbanized area consists of one or more
places with a minimum population of 50,000 people plus adjacent area
with a density of 1000 persons per square mile.
22 We also estimated a model with total 1993 releases and transfers
as the dependent variable, which is a measure of overall toxic chemical
generation in the zip code. The demographic and economic characteristics
in this model can explain some of the variation in generation across zip
codes (e.g., the adjusted [R.sup.2] is 0.33 for the entire U.S.
dataset); however, the coefficient estimates are difficult to interpret
because, as discussed previously, increases in releases can harm the
local environment while increases in transfers can improve the local
environment.
23 Brehm and Hamilton (1996) find that, in Minnesota, small firms
that generated small amounts of toxic chemicals were most likely to fail
to file TRI reports in 1991. They attribute such noncompliance to
ignorance rather than (strategic) evasion of the law. We are grateful to
an anonymous referee for suggesting that we study the impact of under-
and overreporting.
24 We suspect that many of the facilities in group iii are new
facilities that began releasing toxic chemicals between 1990 and 1993
and that many of the facilities in group ii were closed between 1990 and
1993. Fifty-six percent of the group iii facilities' releases are
in the 11 southeastern states, and 50 percent of the group ii
facilities' releases are in the southeastern states. Regional
differences therefore appear limited.
25 Water and land releases represent about 18% and 8% of the total
releases, respectively. Individual coefficients are rarely statistically
different from zero in any of the estimates for these media. Facilities
release toxic chemicals by underground injection in only about 1% of the
zip codes, although by weight, releases of this type represent about 29%
of the total. The small number of zip codes experiencing underground
releases leads to unreliable or unsuccessful estimation results for the
sample selection model.
26 Our findings echo the tales of Afton and Warren counties in
North Carolina documented in Bullard (1990).
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