1 / 29

Multistage Sampling

Multistage Sampling. Outline. Features of Multi-stage Sample Designs Selection probabilities in multi-stage sampling Estimation of parameters Calculation of standard errors Efficiency of multi-stage samples. Introduction.

garron
Télécharger la présentation

Multistage Sampling

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Multistage Sampling

  2. Outline • Features of Multi-stage Sample Designs • Selection probabilities in multi-stage sampling • Estimation of parameters • Calculation of standard errors • Efficiency of multi-stage samples

  3. Introduction • Multi-stage sampling means what its name suggests -> there are multiple stages in the sampling process • The number of stages can be numerous, although it is rare to have more than 3 • For this topic we will concentrate on two-stage sampling • Also known as subsampling

  4. Sampling Units in Multi-stage Sampling • First-stage sampling units are called primary sampling units or PSUs. • Second-stage sampling units are called secondary sampling units or SSUs. • Last-stage sampling units are called ultimate sampling units or USUs.

  5. A A B C 4-stage Sampling (example) Villages EAs Dwelling Persons

  6. Your Examples • Estimation Domains • Stratification • Number of stages • Sampling units for each stage • Sample selection scheme in each stage • Sampling frames used in each stage

  7. Example: Maldives HIES 2002

  8. Two-Stage Sampling • Stage One. Select sample of clusters from population of clusters. • Using any sampling scheme, usually: SRSWOR, PPSWR, LSS • Stage Two. Select sample of elements within each of the sample clusters. • Language: also referred to as ‘subsample’ of elements within a cluster • Subsampling can be done also using any sampling scheme

  9. Most Large-Scale Surveys UseMulti-stage Sampling Because … • Sampling frames are available at higher stages but not for the ultmate sampling units. Construction of sampling frames at each lower stage becomes less costly. • Cost efficiency with use of clusters at higher stages of selection • Flexibility in choice of sampling units and methods of selection at different stages • Contributions of different stages towards sampling variance may be estimated separately

  10. Probabilities of Selection • Probability that an element in the population is selected in a 2-stage sample is the product of • Probability that the cluster to which it belongs is selected at the first stage • Probability that the element is selected at the second stage given that the cluster to which it belongs is selected at the first stage

  11. Example: Two-Stage Samples

  12. Estimation Procedures: Illustrations SRS at stage 1 and SRS at stage 2 SRS at stage 1 and LSS at stage 2 (b from B) PPSWR at stage 1 and SRS at stage 2 (b from B)

  13. SRS – SRS: Estimation of Total Estimator of Total Variance of Estimator

  14. SRS – SRS: Variance of Estimator Sources of Variation = {PSUs} + {SSUs} Total variability = Variability among PSUs + Variability of SSUs

  15. SRS-SRS: Estimating Variance Estimator of Variance of Estimator for Total

  16. SRS-SRS: Estimating a Mean Each PSU has same number of elements, BSubsample of b elements is selected where

  17. … with variance estimate

  18. SRS-SRS: Population Mean (1)PSU’s have unequal sizes

  19. SRS-SRS: Population Mean (2)PSU’s have unequal sizes

  20. SRS-SRS: Population Mean (3)PSU’s have unequal sizes

  21. SRS-LSS: Estimation of Mean

  22. PPSWR-SRS: Estimation of Total

  23. Design Effect for 2-stage Sample • If  is positive, the design effect decreases as the subsample size b decreases. • For fixed n=ab, the smaller the sub-sample size and, hence, the larger the number of clusters included in the sample, the more precise is the sample mean.

  24. Designing a Cluster Sample • What overall precision is needed? • What size should the psus be? • How many ssus should be sampled in each psu selected for the sample? • How many psus should be sampled?

  25. Choosing psu Size • Often a natural unit– not much choice • Larger the psu size, more variability within a psu • ICC is smaller for large psu compared to small psu • but, if psu size is too large, less cost efficient • Need to study relationship between psu sizes and ICC and costs

  26. Optimum Sample Sizes (1) • Goal: get the most information (and hence, more statistically efficient) for the least cost • Illustrative example: PSUs with equal sizes, SRSWOR at both stages

  27. Variance function Optimum Sample Sizes (2) • Cost function • Minimize V subject to given cost C*

  28. Minimize V subject to given cost C* Optimum Sample Sizes (3) • Optimum a=a* and b=b*

  29. Optimum Sample Sizes (4) • Optimum b=b*

More Related