Presentation is loading. Please wait.

Presentation is loading. Please wait.

MOBILITY AND ENVIRONMENTAL EQUITY: Do Housing Choices Determine Exposure to Air Pollution? Brooks Depro North Carolina State University and RTI International.

Similar presentations


Presentation on theme: "MOBILITY AND ENVIRONMENTAL EQUITY: Do Housing Choices Determine Exposure to Air Pollution? Brooks Depro North Carolina State University and RTI International."— Presentation transcript:

1 MOBILITY AND ENVIRONMENTAL EQUITY: Do Housing Choices Determine Exposure to Air Pollution? Brooks Depro North Carolina State University and RTI International and Christopher Timmins Duke University and NBER August 2008

2 Does Mobility Influence Observed Environmental Risk Exposure Patterns?  Fact 1: Minorities and low income households often live in areas with polluted air.  Fact 2: U.S. Census reports 14 percent of the US population move to a new residence in each year.  These facts raise questions about the role of mobility- induced exposure.  However, the relationship between household sorting and exposure is still not well understood.

3 Closely Related Literature: Where Does Our Work Fit? Three broad groups of studies EJ studies: 1.Document correlation with different pollution measures (e.g. proximity to TRI facility, pollution concentrations, traffic studies) (Freeman, 1972; Asch and Seneca, 1978; UCC, 1987;GAO, 1983; GAO, 1995; Brooks and Sethi, 1997; Bullard,2000; Houston et al., 2004) 2.Siting decisions of pollution firms (Hamilton, 1995; Arora and Cason, 1999) 3.Sorting-induced exposure stories (Banzhaf and Walsh, 2008; Sieg, et al, 2004).

4 What Are Our Key Findings?  We find “footprints” in the data that are consistent with the sorting story:  More air pollution = less expensive home.  More housing services = more expensive home.  Tradeoff: a buyer can get more housing services for the same price by moving to a neighborhood with more pollution.  Poor/minority households are more likely to make this tradeoff.  Wealth taken from appreciating housing stocks increases poor/minority ability to avoid this tradeoff.

5 Brief Overview of the Data  The key advantage: we observe individual homebuyer choices on multiple occasions and homebuyer economic circumstances.  This allows us to test the sorting induced exposure story in a more direct way.  Air quality monitor data:  ozone and PM 10 exceedances of pollution standards  House specific exposure (distance to monitor as weights)  Sources: DataQuick (transaction prices), HMDA (race and income), CARB (air pollution data)

6 Visual Patterns of Correlation: Ozone

7 Visual Patterns of Correlation: PM 10

8 Housing Prices and Pollution: Hedonic Price Function  Sample observation for house i, located in zip code j, and selling in year t:  error term ( ) can be decomposed into a  fixed component that is specific to house i ( ) and  a time-varying component ( ).  Year indicators

9 Housing Prices and Pollution: Hedonic Price Function  Houses that sold at least twice during the period between 1990 and 2004  Hedonic Price Function: Fixed house and neighborhood attributes differenced away:  Documents correlation and explaining tradeoff  Validity checks: Compare MWTP ozone and PM10

10 Hedonic Results No House Fixed Effects House Fixed Effects (Differences) Dependent Variable:ln(price)ln(price t+1 ) − ln(price t ) Days exceeded state 1 hour ozone standard (3 year moving average) − 0.05* (0.001) −0.09 * (0.002) Days exceeded state 24 hours PM10 standard (3 year moving average) 0.03* <(0.001) −0.01* <(0.001) Year indicatorsYes Observations271,989148,755 R-Squared0.380.07

11 Examining Housing Services/Pollution Tradeoff  Construct year-specific housing service and neighborhood quality indices  Compute differences in the following variables resulting from move from a first home to a second home:  housing services index,  other neighborhood services index (i.e., zip code fixed effects),  house specific air pollution (measured using the 3-year moving average number of days exceeded for ozone and PM 10 )  Measure correlation changes in these variables for different groups.

12 Low Income Minorities and Asians Make Housing Services/Ozone Tradeoff OzonePM10 Neighborhood Quality Minority White Diff: High Income−0.010.170.08 Minority White Diff: Low Income0.180.080.09 Double Difference:−0.190.09−0.01 Asian White Diff: High Income−0.030.000.08 Asian White Diff: Low Income0.05−0.02−0.01 Double Difference:−0.080.020.09

13 Minorities Experiencing High Gains in Housing Values Avoid Housing Services/Pollution Tradeoff OzonePM10 Neighborhood Quality Minority0.220.040.02 Low Income0.270.030.02 High % Gain0.270.040.00 Low % Gain0.270.030.00 High Income0.100.08−0.08 High % Gain0.12 −0.06 Low % Gain0.080.01−0.10 Diff Income Groups: High % Gain0.15−0.090.05 Diff Income Groups: Low % Gain0.190.020.10 Double Difference:−0.04−0.10−0.05

14 Housing Wealth Effects for Asians Are Mixed OzonePM10 Neighborhood Quality Asian0.11−0.09−0.05 Low Income0.14−0.07−0.08 High % Gain0.19−0.05−0.11 Low % Gain0.10−0.09−0.06 High Income0.08−0.10−0.08 High % Gain0.02−0.05−0.09 Low % Gain0.12−0.14−0.08 Diff Income Groups: High % Gain0.170.00−0.02 Diff Income Groups: Low % Gain−0.020.060.02 Double Difference:0.19−0.06−0.04

15 No Housing Wealth Effect for Whites OzonePM10 Neighborhood Quality White0.09−0.07−0.10 Low Income0.09−0.05−0.07 High % Gain0.08−0.06−0.07 Low % Gain0.10−0.04−0.08 High Income0.11−0.09−0.17 High % Gain0.10−0.11−0.20 Low % Gain0.12−0.08−0.13 Diff Income Groups: High % Gain−0.020.050.13 Diff Income Groups: Low % Gain−0.020.040.05 Double Difference:0.01 0.09

16 Other Implications and Next Steps  Homeowners who move from declining neighborhoods may be more constrained in the housing services/pollution tradeoff.  There may be environmental justice benefits associated with improving access to credit to minority homeowners.  Correlation between race and pollution declines over our sample period.  Use formal estimation methods (systems of equations).  Examine factors the influence the length of housing spells (duration models)


Download ppt "MOBILITY AND ENVIRONMENTAL EQUITY: Do Housing Choices Determine Exposure to Air Pollution? Brooks Depro North Carolina State University and RTI International."

Similar presentations


Ads by Google