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Poverty Estimation in Small Areas

Poverty Estimation in Small Areas. Agne Bikauskaite. European Conference on Quality in Official Statistics (Q2014) Vienna, 3-5 June 2014. Data:. The population size N = 3000 The s ample size n = 300 Number of mutually exclusive strata H = 7

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Poverty Estimation in Small Areas

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  1. Poverty Estimation in Small Areas Agne Bikauskaite European Conference on Quality in Official Statistics (Q2014) Vienna, 3-5 June 2014

  2. Data: • The population sizeN = 3000 • The sample size n = 300 • Number of mutually exclusive strata H = 7 • The income of individuals (yh1, ..., yhN) • The auxiliary information (x1i, ..., xji, ..., xJi) • 1000 simple random samples

  3. Income distribution

  4. Data: • The population sizeN = 3000 • The sample size n = 300 • Number of mutually exclusive strata H = 7 • The income of individuals (yh1, ..., yhN) • The auxiliary information (x1i, ..., xji, ..., xJi) • 1000 simple random samples

  5. Strata size

  6. Stratified Sampling • The sample design probability when element i belongs to stratum h is • The sampling weight for selected person i from the h stratum is

  7. Estimated parameters • The Average Income • The Poverty Line • The Headcount Index • The Poverty Gap Index

  8. The Average Income • The average income in strata h is • The average income estimate is

  9. The Poverty Line • The Poverty Line is defined as 60 per cent of the median equivalent disposable income • The Poverty Line estimate is

  10. The Headcount Index • The headcount index is defined as the number of persons below the poverty line divided by the population number • The Headcount index estimate is

  11. The Poverty Gap • The poverty gapG is defined as an amount of difference between poverty line and income value y of ith person living in poverty or social exclusion • The poverty gap estimate

  12. The Poverty Gap Index • The poverty gap index is a proportion of the poverty gap and the poverty line • The poverty gap index estimate is

  13. Population

  14. What is Small Area?

  15. Sampling in Small Areas

  16. Direct and Indirect Estimates • Direct Estimates: • Not using auxiliary information • Using auxiliary information from the same area • Indirect Estimates: • Using auxiliary information from adjacent areas

  17. Simulated Estimation Methods • The Horvitz-Thompson (HT) • The Generalised Regression (GREG) • The Synthetic (S)

  18. The Absolute Relative Bias • The Absolute Relative Bias (ARB) assessed the accuracy of the estimates

  19. The Horvitz-Thompson estimator • The sum estimate is

  20. The ARB of the average income estimates

  21. The ARB of the headcount index estimates

  22. ARB of the poverty gap index estimate

  23. The GREG estimator • The sum estimate

  24. The ARB of the average income estimates

  25. The ARB of the headcount index estimates

  26. ARB of the poverty gap index estimate

  27. The Synethetic estimator • The sum estimate is

  28. The ARB of the average income estimates

  29. The ARB of the headcount index estimates

  30. ARB of the poverty gap index estimate

  31. The mean estimate’s variance

  32. The Jack-Knife method • The Jack-Knife method’s idea is to divide stratified sample into mutually exclusive subgroups. • The modified sampling weights

  33. The Jack-Knife variance estimator • Then the Jack-Knife variance estimator of estimated parameter is

  34. Conclusions:Poverty parameters estimation • Different estimation methods for large and for small areas • The Synthetic method for poverty estimation in small areas • If auxiliary information from adjacent areas is not available then the most appropriate estimation method is Horvitz-Thompson

  35. Conclusions:Variances estimation of the estimated parameters • Large ARBs • The best results of estimation are given by the Horvitz-Thompson method • Applying Jack-Knife method precision of the estimates increases when the group size is extremely small

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