Finding CountyBased Data from Hidden Sources - PowerPoint PPT Presentation

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Finding CountyBased Data from Hidden Sources

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Produce county-based data from summary data. Not all counties ... Cumulate small population counties by PUMA. Calculate Fertility measures. Total Fertility Rate ... – PowerPoint PPT presentation

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Title: Finding CountyBased Data from Hidden Sources


1
Finding County-Based Data from Hidden Sources
  • Lisa Neidert
  • Population Studies Center
  • University of Michigan

2
Three Problems
  • Produce county-based data from summary data
  • Not all counties represented
  • Produce county-based data from microdata
  • County identifiers are not in microdata
  • Produce county-based data from microdata
  • County identifier in data
  • Some county populations are too small for
    reliable data

3
American Community Survey (ACS)
  • Replacement for the census long-form
    questionnaire
  • 3,000,000 households a year
  • County-level data every year
  • Not quite

4
ACS Products Schedule
5
Distribution of US counties by size
6
Statistics based on ACS 1-year data Unit is
county
7
Statistics based on ACS 3-year data Unit is
county
8
What are PUMAs?
  • Public Use Microdata areas
  • Combination of population geographies that sum to
    at least 100,000 population.
  • In rural areas, several counties will form a
    PUMA. In an urban area, a county will be
    subdivided into multiple PUMAs.
  • PUMAs do not cross state boundaries
  • Smallest geography available in the microdata.

9
Statistics based on ACS 3-year data Unit is PUMA
10
Convert PUMA-based statistics to county-based
statistics
11
PUMA-based statistic
12
Converted to county-based statistic
13
Example based on microdata
  • Previous example used a table from summary data
  • Distribution of the baby boom population
  • Microdata allows user-generated table
  • Distribution of earning equality among couples

14
Where do couples have egalitarian earnings
profiles?
  • Micro-data step

15
Where do couples have egalitarian earnings
profiles?
  • Micro-data step
  • Produce PUMA-specific results

16
Where do couples have egalitarian earnings
profiles?
  • Micro-data step
  • Produce PUMA-specific results
  • Convert PUMA-based results to county-based using
    cross-walk

17
What about microdata with county identifiers?
  • Identifiers on Natality Detail files
  • 1968-1988 all counties identified
  • 1989-2005 only counties gt 100,000
  • 2006 no state or county identifiers
  • Distribution of births by county (1988)
  • lt100 512 counties
  • lt500 1,998 counties
  • lt1000 2,498 counties
  • Some extreme cases
  • Loving county, TX 2 births
  • Hinsdale county, CO 3 births
  • Petroleum county, MT 3 births

18
Solution
  • Cumulate small population counties by PUMA
  • Calculate Fertility measures
  • Total Fertility Rate
  • Timing of fertility events
  • Non-marital childbearing
  • Use cross-walk to assign PUMA characteristic to
    counties

19
Finished Product
20
Future Directions
  • Cautionary
  • Pseudo-county data
  • Small population-based statistics
  • County population may be incorrect weight
  • Web-based tool (PUMA to County)
  • Input PUMA-based table
  • Output County-based table
  • GIS ready
  • Include indicator for multi-county PUMAs
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