Geographic Oversampling for Race/Ethnicity Using Data from the 2010 Census Presented to WSS Sixia Chen December 3, 2014.

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Presentation transcript:

Geographic Oversampling for Race/Ethnicity Using Data from the 2010 Census Presented to WSS Sixia Chen December 3, 2014

Overview A number of surveys are carried out to study the characteristics of specific race/ethnicity domains: — National Health and Nutrition Examination Survey (NHANES): Blacks, Hispanics and Asians. —2014 Minnesota Survey on Adult Substance Use (MNSASU): Blacks, Asians, American Indians and Hispanics. — California Health Interview Survey (CHIS): Latinos, Vietnamese, Koreans, and American Indians/Alaska Natives. 2

Overview (cont.) Various sampling approaches for sampling minorities: —Oversample strata defined by the geographic areas where the minority is more concentrated, such as 2014 MNSASU. —Oversample by surnames (sometimes first names also) for Asians and Hispanics, such as 2010 CHIS, 2014 MNSASU. —Location sampling has been used for sampling Brazilians of Japanese descent. —Others (e.g., respondent driven sampling) 3

Geographic Oversampling This presentation focus on geographic oversampling. Waksberg, Judkins, and Massey (1997) evaluated the effectiveness of geographic oversampling based on data from the 1990 Census. This presentation updates the Waksberg et al. results using the 2010 Census, and extends the results to subdivisions of the country and oversampling multiple minorities simultaneously. 4

Outline Basic theoretical results. Comparisons of the effectiveness of geographic oversampling in 1990 and 2010 at the national level for Blacks, Hispanics, Asians, and American Indians/Alaska Natives (AI/AN). An investigation of different cut-points of minority prevalence in forming the strata. Application of the approach to Census regions and to Core Based Statistical Areas (CBSAs) and non-CBSAs. Some approaches for oversampling multiple domains. Limitations and conclusions. 5

Underlying Assumptions 6

Theoretical Results (Kalton and Anderson, 1986) 7

Theoretical Results (cont.) 8

9

Effectiveness of Oversampling in 1990 and 2010 The results presented are for density strata based on minority densities in (1) Census blocks and (2) Census block groups (BGs). For comparability the same density strata definitions are used for both years. The 1990 Census question asked for only a single race, whereas the 2010 question allowed for multiple races. The 2010 results reported here are for those who responded only the specified race (e.g., Blacks alone). 10

Effectiveness of Oversampling in 1990 and 2010 (cont.) The numbers of block was about 25 percent larger in 2010 than in 1990 whereas the number of block groups declined slightly. The Hispanic and Asian minorities are far more prevalent in 2010 than they were in The comparative results are for single race and all ages; later results are for a given race for adults aged 18 and over. 11

Clustering of Blacks by Blocks, 1990 and <10% %-30% %-60% %-60% Total 100 Blacks as % of total population 1213

Clustering of Hispanics by Blocks in 1990 and <5% %-10% %-30% %-60% %-100% Total 100 Hispanic as % of total population 916

Clustering of Asians 1 by Blocks, 1990 and <5% %-10% %-30% %-60% %-100% Total100 Asians as % of total population 35 1 Asians, Native Hawaiians, and other Pacific Islanders

Clustering of AI/AN by Blocks, 1990 and <5% %-10% %-30% %-60% %-100% Total100 AI/AN as % of total population 11 15

Minority1990 Block2010 Block1990 BG2010 BG Black Hispanic Asian AI/AN

17 BlackHispanicAsianAI/AN

MinorityOriginalOptimal Black4247 Hispanic40 Asian42 AI/AN Rented housing

BlackHispanicAsianAI/AN National Northeast Midwest South West CBSA Non-CBSA

Clustering of Blacks in Non-CBSAs, 2010 Block Data Density stratumPercent of BlacksPercent of total population <5%382 5%-10%34 10%-25%94 25%-50%174 50%-100%687 Total100 Blacks as % non- CBSA population 8 20

StrataBlackHispanicAsianAI/AN None Region CBSA/non- CBSA Region X Density CBSA/non-CBSA X Density

Estimating Parameters for Multiple Domains 22

Simple Random Sampling (SRS) Under this equal probability design, the effective sample size is equal to the actual sample size for both domains. Select a screening sample of the size needed to produce the desired sample size for the rarer of the two domains (Blacks in this case). Sample all members of the rarer domain, but sample only a fraction of the less rare domain (the remainder receiving only the screening interview). 23

Combined Density Stratification (CDS) Construct separate sets of five strata for Blacks and Hispanics, using optimum stratification. Cross-classify these strata into 25 cells which are then taken as the final strata. Compute sampling fractions within each of the final strata, together with the effective sample size requirement, for each domain separately. Apply the higher of the two domain sampling fractions in each of the final strata. Include all those sampled from the rarer domain in the sample, but retain only a fraction of the sample in the other domain. 24

Weighted Density Stratification (WDS) 25

Nonlinear Programming Method (NLP) 26

Percentage cost reduction compared with SRS by geographic oversampling using the three alternative methods for different values of c Cost ratio, c DDSWDSNLP

MethodBlacksHispanics DDS 2715 WDS 3323 NLP 3727 Single domain

Limitations The variance reductions will be lower later in the decade (Waksberg et al.,1997). The multiple domain approaches are work in progress. Further research is needed in this area. The basic theory assumes a single stage sample with SRS within the density strata. There is a need to consider complex sample designs. See Clark (2009). 29

Conclusions Geographic oversampling remains a useful method for sampling minority populations, although the gains are smaller than they were in The variance reductions do vary by region and are particularly large for all minorities in non-CBSAs. The choice of cut-points seems be fairly robust to departures from the optimum cut-points. Stratification by region and by CBSA/non-CBSA do not add much benefit after oversampling minorities. The NLP method performed the best of the three approaches for oversampling more than one minority. 30

References Clark, R. G. (2009). Sampling of subpopulations in two- stage surveys. Statistics in Medicine, 28, 3697–3717. Folsom, R.E., Potter, F.J. and Williams, S.K. (1987). Notes on a composite size measure for self-weighting samples in multiple domains. Proceedings of the Section on Survey Research Methods, ASA, Kalton, G. and Anderson, D. W. (1986). Sampling rare populations. Journal of the Royal Statistical Society, A, 149, Waksberg, J., Judkins, D. and Massey, J.T. (1997). Geographic-based oversampling in demographic surveys of the United States. Survey Methodology, 23,

Thank You 32