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AN APPLICATION OF BAYESIAN METHODS TO
SMALL AREA ESTIMATES OF POVERTY RATES

Joey Campbell
Corey Sparks
The University of Texas at San Antonio
Department of Demography
INTRODUCTION

   Estimates of various socio-demographic
    variables for small geographical areas are
    proving difficult with the replacement of the
    Census long form with the American
    Community Survey (ACS).
   Sub-national demographic processes have
    generally relied on Census 2000 long form
    data products in order to answer research
    questions.
INTRODUCTION

   ACS data products promise to begin
    providing up-to-date profiles of the nation's
    population and economy
   Unit and item level non-response in the ACS
    have left gaps in sub-national coverage
   The result is unstable estimates for basic
    demographic measures.
PURPOSE
   Borrowing information from neighboring areas
    with a spatial smoothing process based on
    Bayesian statistical methods
   Generate more stable estimates of rates for
    geographic areas not initially represented in the
    ACS.
   A spatial smoothing process grounded in
    Bayesian statistics, is used to derive estimates
    of poverty rates at the county level for the
    United States.
   Data come from two sources
   US Census 2000 Summary File 3
   American Community Survey
       2001 – 2005 1-year estimates
       2005 – 2007, 2006 – 2008 3-year estimates
       2005 – 2009 5-year estimates
   U.S. Counties
       N=3,141 (Continental)
       2000 Census is missing poverty rates for 0 counties
       ACS is missing poverty rates for up to 3,123 counties for some
        years
            Primarily due to small population sizes of counties
ESTIMATING COUNTY-LEVEL RATES


METHODS: BAYESIAN HIERARCHICAL MODEL
   Bayesian Statistics
       Uses Prior information for estimation of parameters of interest
       Allows for posterior estimation of these parameters using the
        combination of the information in the likelihood and the prior
   Hierarchical Modeling
       Bayesian Hierarchical Model
       Allows for a spatially and temporally smoothed estimate of
        rates
       Draws “strength” from neighboring observations
       Estimated with WinBUGS via Markov–Chain Monte Carlo
        methods
       100,000 simulations with 20,000 burn in period
THE MODELS
 yi~ bin(pi, ni)
 logit(pi) = μ0+Ai+Bj+ Cij
THE MODELS
 yi~ bin(pi, ni)
 logit(pi) = μ0+Ai+Bj+ Cij


           Overal
              l
            rate
THE MODELS
 yi~ bin(pi, ni)
 logit(pi) = μ0+Ai+Bj+ Cij


           Overal
              l
            rate
                     The
                    spatial
                    group
THE MODELS
 yi~ bin(pi, ni)
 logit(pi) = μ0+Ai+Bj+ Cij


           Overal
              l
            rate
                     The
                    spatial
                    group

                               The
                               time
                              group
THE MODELS
 yi~ bin(pi, ni)
 logit(pi) = μ0+Ai+Bj+ Cij


           Overal
              l
            rate
                     The
                    spatial
                    group

                               The
                               time
                              group    The
                                      space
                                      -time
                                      group
THE MODELS
 yi~ bin(pi, ni)
 logit(pi) = μ0+Ai+Bj+ Cij
        Summary of Model Specification
                       Spatial     Temporal      Space-time
                       Terms        Terms          Terms
        Model            Ai               Bj         Cij
        1               vi+ui            βtj         0
        2               vi+ui             tj         0
        3               vi+ui            tj+ξj       0
        4               vi+ui             tj         ψij
        5               vi+ui            tj+ξj       ψij
        6               vi+ui             tj         ψij
Each model was evaluated with respect to how it
recreated the overall poverty rate, the known time trend,
and the known spatial distribution
RESULTS: OVERALL POVERTY RATE

   The overall estimate of U.S. poverty in 2001
    according to
     SAIPE = 13.74 percent.
     Model 1 = 13.97 percent

     Model 2 = Model 3 =13.96 percent

     Model 4 = Model 5 = 14.15 percent, and

     Model 6 = 14.17 percent.

   Overall, the Bayesian models produce similar
    rates of those estimated by more traditional
    methods.
RESULTS: ERROR RATES

Mean Absolute Percent Error (MAPE) Rates for Bayesian Estimates of US County
Poverty Rates compared to SAIPE
Model   2001    2002   2003   2004   2005   2006   2007   2008   2009   Total
                10.6
  1     11%            10.8% 11.2%   8.8%   9.3%   9.8%   10.9% 13.1% 11.5%
                 %
  2     10.5%   10%    10.4% 11.1%   8.2%   9.1%   9.8%   11%    13%    10.3%

  3     10.5% 10.4% 10.4% 11.1%      8.2%   9.1%   9.8%   11.0% 13.0% 10.3%

  4     10.6% 11.8% 12.0% 13.1% 10.3% 11.0% 10.6% 11.1% 11.7% 11.3%

  5     10.6% 11.8% 12.0% 13.1% 10.3% 11.0% 10.6% 11.1% 11.7% 11.3%

  6     10.7% 11.9% 12.2% 13.2% 10.3% 11.0% 10.5% 10.8% 11.8% 11.3%
DISCUSSION

   Although the estimates of various socio-
    demographic variables in the ACS have
    improved over time, progress is not as fast as
    expected
   Local level efforts have been advocated to help
    combat various outcomes associated with
    poverty.
   Consequently, reliable estimates for small areas
    are necessary for these efforts to move forward
DISCUSSION
   The Bayesian approach has been demonstrated
    to produce reliable and dependable estimates
    by borrowing information both across time and
    from neighboring counties
 Hopefully these estimates (and this method) can
  be employed to effectively understand how
  socio-demographic variables vary at the local
  level
 Additionally, models may be formulated that
  incorporate ACS errors directly (Bayesian SEM)

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Campbell sparkspaa12

  • 1. AN APPLICATION OF BAYESIAN METHODS TO SMALL AREA ESTIMATES OF POVERTY RATES Joey Campbell Corey Sparks The University of Texas at San Antonio Department of Demography
  • 2. INTRODUCTION  Estimates of various socio-demographic variables for small geographical areas are proving difficult with the replacement of the Census long form with the American Community Survey (ACS).  Sub-national demographic processes have generally relied on Census 2000 long form data products in order to answer research questions.
  • 3. INTRODUCTION  ACS data products promise to begin providing up-to-date profiles of the nation's population and economy  Unit and item level non-response in the ACS have left gaps in sub-national coverage  The result is unstable estimates for basic demographic measures.
  • 4. PURPOSE  Borrowing information from neighboring areas with a spatial smoothing process based on Bayesian statistical methods  Generate more stable estimates of rates for geographic areas not initially represented in the ACS.  A spatial smoothing process grounded in Bayesian statistics, is used to derive estimates of poverty rates at the county level for the United States.
  • 5. Data come from two sources  US Census 2000 Summary File 3  American Community Survey  2001 – 2005 1-year estimates  2005 – 2007, 2006 – 2008 3-year estimates  2005 – 2009 5-year estimates  U.S. Counties  N=3,141 (Continental)  2000 Census is missing poverty rates for 0 counties  ACS is missing poverty rates for up to 3,123 counties for some years  Primarily due to small population sizes of counties
  • 7. METHODS: BAYESIAN HIERARCHICAL MODEL  Bayesian Statistics  Uses Prior information for estimation of parameters of interest  Allows for posterior estimation of these parameters using the combination of the information in the likelihood and the prior  Hierarchical Modeling  Bayesian Hierarchical Model  Allows for a spatially and temporally smoothed estimate of rates  Draws “strength” from neighboring observations  Estimated with WinBUGS via Markov–Chain Monte Carlo methods  100,000 simulations with 20,000 burn in period
  • 8.
  • 9.
  • 10. THE MODELS  yi~ bin(pi, ni)  logit(pi) = μ0+Ai+Bj+ Cij
  • 11. THE MODELS  yi~ bin(pi, ni)  logit(pi) = μ0+Ai+Bj+ Cij Overal l rate
  • 12. THE MODELS  yi~ bin(pi, ni)  logit(pi) = μ0+Ai+Bj+ Cij Overal l rate The spatial group
  • 13. THE MODELS  yi~ bin(pi, ni)  logit(pi) = μ0+Ai+Bj+ Cij Overal l rate The spatial group The time group
  • 14. THE MODELS  yi~ bin(pi, ni)  logit(pi) = μ0+Ai+Bj+ Cij Overal l rate The spatial group The time group The space -time group
  • 15. THE MODELS  yi~ bin(pi, ni)  logit(pi) = μ0+Ai+Bj+ Cij Summary of Model Specification Spatial Temporal Space-time Terms Terms Terms Model Ai Bj Cij 1 vi+ui βtj 0 2 vi+ui tj 0 3 vi+ui tj+ξj 0 4 vi+ui tj ψij 5 vi+ui tj+ξj ψij 6 vi+ui tj ψij Each model was evaluated with respect to how it recreated the overall poverty rate, the known time trend, and the known spatial distribution
  • 16. RESULTS: OVERALL POVERTY RATE  The overall estimate of U.S. poverty in 2001 according to  SAIPE = 13.74 percent.  Model 1 = 13.97 percent  Model 2 = Model 3 =13.96 percent  Model 4 = Model 5 = 14.15 percent, and  Model 6 = 14.17 percent.  Overall, the Bayesian models produce similar rates of those estimated by more traditional methods.
  • 17.
  • 18.
  • 19.
  • 20. RESULTS: ERROR RATES Mean Absolute Percent Error (MAPE) Rates for Bayesian Estimates of US County Poverty Rates compared to SAIPE Model 2001 2002 2003 2004 2005 2006 2007 2008 2009 Total 10.6 1 11% 10.8% 11.2% 8.8% 9.3% 9.8% 10.9% 13.1% 11.5% % 2 10.5% 10% 10.4% 11.1% 8.2% 9.1% 9.8% 11% 13% 10.3% 3 10.5% 10.4% 10.4% 11.1% 8.2% 9.1% 9.8% 11.0% 13.0% 10.3% 4 10.6% 11.8% 12.0% 13.1% 10.3% 11.0% 10.6% 11.1% 11.7% 11.3% 5 10.6% 11.8% 12.0% 13.1% 10.3% 11.0% 10.6% 11.1% 11.7% 11.3% 6 10.7% 11.9% 12.2% 13.2% 10.3% 11.0% 10.5% 10.8% 11.8% 11.3%
  • 21. DISCUSSION  Although the estimates of various socio- demographic variables in the ACS have improved over time, progress is not as fast as expected  Local level efforts have been advocated to help combat various outcomes associated with poverty.  Consequently, reliable estimates for small areas are necessary for these efforts to move forward
  • 22. DISCUSSION  The Bayesian approach has been demonstrated to produce reliable and dependable estimates by borrowing information both across time and from neighboring counties  Hopefully these estimates (and this method) can be employed to effectively understand how socio-demographic variables vary at the local level  Additionally, models may be formulated that incorporate ACS errors directly (Bayesian SEM)