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Supplemental Poverty Measure Working Papers

Working papers are intended to make results of Census Bureau research available to others and to encourage discussion on a variety of topics. They have not undergone a review and editorial process generally accorded official Census Bureau publications.

View the list of working paper topics.

View the list of working papers by year.


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Working Paper
The Impact of New Disclosure Avoidance Procedures on Estimating Supplemental Poverty Rates Using Public Microdata Files
This paper compares poverty estimates between the internal and public use 2022 and 2023 Current Population Survey Annual Social and Economic Supplements.


Working Paper
Modeling State Tax Rebate Payments in the 2022 CPS ASEC
This paper summarizes state income tax rebates issued in 2022, inclusion of these payments in Census’s tax model, and impacts on post-tax income estimates.


Working Paper
Alternative School Lunch Valuation in the 2022 Supplemental Poverty Measure
This paper describes the updated method for calculating and assigning school lunch values in the 2022 SPM.


Working Paper
Challenges in Producing the 2021 ACS SPM
This paper provides a methodology for producing the Supplemental Poverty Measure in the American Community Survey.


Working Paper
Health Inclusive Poverty Measure Estimates in the United States: 2014 to 2021
This paper presents estimates of Health Inclusive Poverty in the United States from 2014 to 2021.


Working Paper
Measuring Poverty Subannually in the United States: A Methodology Note
This paper discusses a methodology for estimating monthly poverty rates for the United States.


Working Paper
Identifying Gentrification Using Machine Learning
The paper explores machine learning techniques to identify housing units at high risk of gentrification in Washington D.C. Metropolitan Statistical Area.

Page Last Revised - December 16, 2021
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