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Lecture 4: Topics to Be Covered . Stratified Random SamplingIntroductionHow to draw a stratified random sampleEstimation of population mean
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1. Sampling Technique For Decision Making QQS3083 Bidin Yatim, Associate Professor
Phd Applied Statistics(Exeter, UK)
MSc Industrial Mathematics (Aston, UK)
BSc Mathematics & Statistics (Nottingham, UK)
2. Lecture 4: Topics to Be Covered Stratified Random Sampling
Introduction
How to draw a stratified random sample
Estimation of population mean & total
Selecting the sample size for estimating population means and totals
Allocation of the sample
Estimation of population proportion
Selecting the sample size and allocating the sample to estimate proportions
3. Topics to Be Covered… Additional comments on stratified sampling
Optimal rules for choosing strata
Stratification after sample selection
Double sampling for stratification
Summary
4. The Sampling Process
5. Stratified random sampling Definition:
A stratified random sample is one obtained by separating the population elements into non-overlapping groups, called strata, and then selecting a simple random sample from each stratum.
6. Example Suppose an opinion poll designed to estimate the proportion of the students who favor the reintroduction of the “old bus service system” in UUM. The hostels are located on three routes. A stratified sample of students residing in hostels along these routes can be obtained by selecting a simple random sample from each route. The three routes represent three strata. If the students’ gender is believe to influence the result of the poll, the students from each route can further be divided according to gender.
7. Why need a stratified sample? The goal of designing survey is to maximize information (or to minimize margin of error) for a fixed expenditure. Sample displaying small variability will produce small margin of error. If students from the same route of the same gender think alike on the issue, we can obtain a very accurate estimate of the interested proportion with a relatively smaller sample.
Smaller sample can reduce the cost of obtaining the observations
Estimates of the population parameters may be desired for subgroups (strata) of the population
8. Example Sampling hospital patients on a certain diet to assess weight gain may be more efficient if patients are stratified by gender because men tend to weight more than women.
9. How to select a stratified sample? CLEARLY specify the strata. Each sampling unit of the population is placed into its appropriate stratum.
Select a simple random sample from each stratum using the techniques described in Lecture 3.
Ensure that the selection of samples for the strata are independent by using a different sampling frame.
Additional notation: L number of strata, Ni the size of stratum i, N=N1+N2+…+NL
10. Stratified random sampling by Example Example 5.1 p120 (Scheaffer et. al. 2006). Suppose N1=155, N2=62, N3=93 and N=310
Merit of using stratified sampling: (i) Natural grouping of two towns and a rural area, according to geographical area, provide administrative convenience in selecting samples and fieldwork. (ii) Each group should have similar behavior pattern hence smaller variability and smaller error margin. (iii) Allows parameter estimates for all the groups.
11. Estimation of a population mean and total Estimate the total of each stratum. Population total is the sum of all strata’s total. Eqn. 5.3
Estimated variance of the estimated total is given in Equation 5.4
Estimate the mean of each strata. Estimate the total for each strata and the population mean is the sum of all strata’s total divided by the N. See Equation 5.1 p121.
Estimated variance of the estimated mean is given in Equation 5.2 and hence
95% margin of error is 2 times the estimated standard deviation of the estimator.
12. Example 5.2 Suppose n=40 households. N1=20 from Town A, n2=8 from Town B, n3=12 from rural area. SRS selected and interview done. Results shown in Fig. 5.1. Estimate the average viewing time of all the households in the county and in Town A and B. Comment on the difference of the size of error margin in each case.
13. Determining Sample Size for estimating population means & totals The amount of sample information depends on the sample size because the variance of the estimator decreases as n increases. If the estimator is specified to be within B units of the mean (and total) at 95% level, then the approximate sample size are given by Equation 5.6.
However, the estimate of the variance of each stratum is needed before applying 5.6. Use the results of previous studies or, use the range of each stratum. By Tchebysheff’s theorem and normal distribution, the range should be 4 to 6 SD or Conduct a small-scale study of each stratum.
Fraction of observation allocated to each stratum ai is discuss next.
14. Discussion of Examples 5.5 & 5.6
15. Allocation of the sample NOTE: The best allocation provides the smallest variance at the minimum cost.
After determining n, there is many ways of dividing n into each stratum size. Each may result in a difference variance. The best allocation scheme affected by: (i) Total of each stratum (ii) variability of each stratum (iii) the cost of obtaining observations in each stratum.
16. Allocation of the sample … Large sample size for large stratum
Large sample size for stratum which is less homogeneous
Smaller sample for strata with high cost to keep cost of sampling at a minimum.
17. Approx. allocation that minimize cost for a fixed value of variance of the estimator or minimize the variance at a fixed cost given by Equation 5.7 where …..
need to approximate
Belum lengkap lagi ….
18. Estimation of population proportion
19. Key results for estimating population proportion Estimator of the population proportion
Equation (
Estimated variance of sample proportion
Equation (
Bound on the error (margin of error, B) of estimation
Note: Margin of error with 95% confident level is B=2 std dev of the estimator i.e 2~1.96
20. Example: Estimating population proportion
21. Determining Sample Size: Proportions
22. Determining Sample Proportions Estimator of the Standard Deviation of the Population (s): This proportion may be estimated in a similar way to that used to approximate the standard deviation when calculating sample size using mean statistics.
23. End of PresentationSee U Later…