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Race-Specific Risk Factors for Homeownership Disparity in the Continental United States
Volume 22, Issue 4 (2024), pp. 591–604
Rachel E. Richardson   Damon T. Leach   Natalie M. Winans     All authors (6)

Authors

 
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https://doi.org/10.6339/23-JDS1116
Pub. online: 13 December 2023      Type: Data Science In Action      Open accessOpen Access

Received
10 December 2022
Accepted
29 October 2023
Published
13 December 2023

Abstract

The United States has a racial homeownership gap due to a legacy of historic inequality and discriminatory policies, but factors that contribute to the racial disparity in homeownership rates between White Americans and people of color have not been fully characterized. In order to alleviate this issue, policymakers need a better understanding of how risk factors affect the homeownership rates of racial and ethnic groups differently. In this study, data from several publicly available surveys, including the American Community Survey and United States Census, were leveraged in combination with statistical learning models to investigate potential factors related to homeownership rates across racial and ethnic categories, with a focus on how risk factors vary by race or ethnicity. Our models indicated that job availability for specific demographics, and specific regions of the United States were factors that affect homeownership rates in Black, Hispanic, and Asian populations in different ways. Based on the results of this study, it is recommended policymakers promote strategies to increase access to jobs for people of color (POC), such as vocational training and programs to reduce implicit bias in hiring practices. These interventions could ultimately increase homeownership rates for POC and be a step toward reducing the racial wealth gap.

Supplementary material

 Supplementary Material
Open-source code, additional visualizations and tables, as well as original datasets are available in a public GitHub repository: https://github.com/PNNL-CompBio/HomeownershipDisparity_2015_2019 Tables • Table 1: Descriptions of variables • Table 2: Division county percentages per Race dataset • Table 3: Number of counties in each dataset Plots • Figure 1: Dataset timeline • Figure 2: Important variables for White models with and without outliers • Figure 3: Correlation between predictor variables • Figure 4: Model performance on 10% holdout data

References

 
Biau G, Scornet E (2016). A random forest guided tour. TEST, 25(2): 197–227. https://doi.org/10.1007/s11749-016-0481-7
 
Breiman L (2001). Random forests. Machine Learning, 45(1): 5–32. https://doi.org/10.1023/A:1010933404324
 
Choi JH, McCargo A, Neal M, Goodman L, Young C (2019). Explaining the Black-White Homeownership Gap, volume 25. Urban Institute, Washington, DC. Retrieved: March 25, 2021.
 
Department of Defense (2014). Per diem rates by location. Retrieved from: https://www.travel.dod.mil/.
 
Gabriel SA, Rosenthal SS (2005). Homeownership in the 1980s and 1990s: aggregate trends and racial gaps. Journal of Urban Economics, 57(1): 101–127. https://doi.org/10.1016/j.jue.2004.09.001
 
Hafen R, Schloerke B (2021). trelliscopejs: Create Interactive Trelliscope Displays. R package version 0.2.6.
 
Henry L, Wickham H (2022). purrr: Functional Programming Tools. R package version 0.3.5.
 
Hilber CA, Liu Y (2008). Explaining the Black–White homeownership gap: The role of own wealth, parental externalities and locational preferences. Journal of Housing Economics, 17(2): 152–174. https://doi.org/10.1016/j.jhe.2008.02.001
 
Kuebler M, Rugh JS (2013). New evidence on racial and ethnic disparities in homeownership in the United States from 2001 to 2010. Social Science Research, 42(5): 1357–1374. https://doi.org/10.1016/j.ssresearch.2013.06.004
 
Liaw A, Wiener M (2013). Classification and regression by randomForest. R News, 2(3): 18–22.
 
McCargo A, Choi JH, Golding E (2019). Building Black Homeownership Bridges: A Five-Point Framework for Reducing the Racial Homeownership Gap. Urban Institute, Washington, DC.
 
Perez AD, Hirschman C (2009). The changing racial and ethnic composition of the US population: Emerging American identities. Population and Development Review, 35(1): 1–51. https://doi.org/10.1111/j.1728-4457.2009.00260.x
 
R Core Team (2020). R: A Language and Environment for Statistical Computing. R Foundation for Statistical Computing, Vienna, Austria.
 
Ray R, Perry AM, Harshbarger D, Elizondo S, Gibbons A (2021). Homeownership, racial segregation, and policy solutions to racial wealth equity.
 
Spearman C (1987). The proof and measurement of association between two things. The American Journal of Psychology, 100(3/4): 441–471. https://doi.org/10.2307/1422689
 
Strochak S, Ueyama K, Williams A (2022). urbnmapr: State and county shapefiles in sf and tibble format. R package version 0.0.0.9002.
 
Turner TM, Luea H (2009). Homeownership, wealth accumulation and income status. Journal of Housing Economics, 18(2): 104–114. https://doi.org/10.1016/j.jhe.2009.04.005
 
Urban Institute (2020). Household conditions by geographical school district. Retrieved from: https://datacatalog.urban.org/dataset/household-conditions-geographic-school-district. Data originally sourced from NHGIS. developed at the Urban Institute, and made available under the ODC-BY 1.0 Attribution License.
 
Urban Institute (2021a). Homeowner assistance fund county-level targeting data. Retrieved from: https://datacatalog.urban.org/dataset/homeowner-assistance-fund-county-l. Data originally sourced from NHGIS, developed at the Urban Institute, and made available under the ODC-BY 1.0 Attribution License.
 
Urban Institute (2021b). Unequal commute data. Retrieved from: https://datacatalog.urban.org/dataset/unequal-commute-data. Data originally sourced from US Census Bureau’s 2017 LEHD Origin-Destination Employment Statistics, 2014–18 American Community Survey five-year estimates, Transitland repository, OpenStreetMap, and INRIX’s 2019 Global Traffic Scorecard, developed at the Urban Institute, and made available under the ODC-BY 1.0 Attribution License.
 
Urban Institute (2022). Longitudinal Employer-household Dynamics origin-destination Employment Statistics (LODES) summary files – census tract level. Retrieved from: https://datacatalog.urban.org/dataset/longitudinal-employer-household-dynamics-origin-destination-employment-statistics-lodes. Data originally sourced from the US Census Bureau, developed at the Urban Institute, and made available under the ODC-BY 1.0 Attribution License.
 
US Census Beaureau (2019). Travel time to work in the United States. Retrieved from: https://www.census.gov/content/dam/Census/library/publications/2021/acs/acs-47.pdf.
 
US Census Bureau (2013). Census bureau regions and divisions with state FIPS codes. Retrieved from: https://www2.census.gov/geo/pdfs/maps-data/maps/reference/.
 
US Census Bureau (2019a). Annual county resident population estimates by age, sex, race, and Hispanic origin: April 1, 2010 to July 1, 2019. Retrieved from: https://www.census.gov/data/tables/time-series/demo/popest/2010s-counties-detail.html.
 
US Census Bureau (2019b). Annual resident population estimates, estimated components of resident population change, and rates of the components of resident population change for states and counties: April 1, 2010 to July 1, 2019. Retrieved from: https://www.census.gov/data/tables/time-series/demo/popest/2010s-counties-total.html.
 
US Census Bureau (2019c). Building permits survey. Retrieved from: https://www.census.gov/construction/bps/.
 
US Census Bureau (2020a). Average household size and population density. Retrieved from: https://covid19.census.gov/datasets/USCensus::average-household-size-and-population-density-county.
 
US Census Bureau (2020b). Highest level of educational attainment. Retrieved from: https://data.ers.usda.gov/reports.aspx?ID=17829.
 
US Census Bureau (2022). American Community Survey 1-year estimates: New England Division. Retrieved from: https://censusreporter.org/profiles/03000US1-new-england-division/.
 
Wickham H (2016). ggplot2: Elegant Graphics for Data Analysis.
 
Wickham H, François Henry L R, Müller K (2022). dplyr: A Grammar of Data Manipulation. R package version 1.0.10.

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Copyright
2024 The Author(s). Published by the School of Statistics and the Center for Applied Statistics, Renmin University of China.
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Open access article under the CC BY license.

Keywords
census economics random forest survey

Funding
PNNL is a multi-program national laboratory operated for the U.S. Department of Energy (DOE) by Battelle Memorial Institute under Contract No. DE-AC05-76RL01830.

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