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Sample Design Issues in EGRA

Sample Design Issues in EGRA. Session 1.4. Outline. General considerations/background Specifics based on experiences thus far How use affects size and design. General considerations & background. Almost everything we say will depend on the use , e.g.: Broad policy awareness

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Sample Design Issues in EGRA

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  1. Sample Design Issues in EGRA Session 1.4

  2. Outline • General considerations/background • Specifics based on experiences thus far • How use affects size and design

  3. General considerations & background • Almost everything we say will depend on the use, e.g.: • Broad policy awareness • Project impact evaluation • Project monitoring/tracking • All require different approaches and sample sizes

  4. Why sample? Much more efficient than full count Achieve reasonable accuracy at fraction of cost Example: for one grade, how many students? “Full count” is an illusion in any case? General considerations & background Assumptions: Mean 30, SD 30, DEFT 2.5, for field labor is 20 children/day at $100/day for field labor if use paid labor

  5. General considerations & background • Look at size and types of sample • Size – two common myths • Common in many countries: “a 2% sample” • This is a largely meaningless, yet very widespread, notion • A sample of 2 out of a population of 100 is useless • A sample of 20,000 out of a population of 10,000,000 is way bigger than needed for any reasonable purpose • Percentages are not a good guide to sample size • Population: mostly irrelevant • E.g.: population of 10,000 might need sample of 370 • But population of 10,000,000 needs only 384 • A sip of soup will tell us how salty the soup is no matter how big the pot is, as long as well stirred

  6. General considerations & background • Sample Size – the 3 determinants that really matter • How confident we want to be: 90%, 95% or 99%? • The more confidence we want, the bigger the sample we need • How big a margin of error we are willing to tolerate? • (How wide a confidence interval) • The less tolerant we are, the bigger the sample we need • Margin of error in terms of, say, words per minute: 7? 14? • How variable is the thing we are trying to measure? • The more variable, the bigger the sample we need

  7. Outline • General considerations/background • Specifics based on experiences thus far • How use affects size and design

  8. Specifics based on experience thus far • Sample Size: Considerations • We propose to use Oral Reading Fluency in connected text, in terms of correct words per minute, as the key “marker” for driving sample size calculations (cwpm) • From our research in 7 countries thus far we can tell that: • Average cwpm difference between grades: 14 • Average standard deviation: 29 • And we figure 95% confidence is good enough • (EPI studies in health sector use 90%)

  9. Likely sample sizes needed Assumes an ICC of 0.45 and 12 children per school (per grade)

  10. An important design issue • All these sample sizes assume a clustered approach • A simple random sample where you pick children completely at random requires smaller samples • The proposed (“clustered”) approach means selecting schools at random and then children at random • Two advantages (at least): • More economical, because of transport costs • We have no universal lists of children

  11. An important design issue (cont’d) • But children within schools vary less than children in general, so there is a penalty • Generally, this means we need samples sizes about 6 times bigger than in a simple random sample • Pick schools, then pick, say, 12 students per school per grade • But we still save money, because need to visit less schools

  12. Outline • General considerations/background • Specifics based on experiences thus far • How use affects size and design

  13. How does use affect sampling? Too complex for this session, but some key points/examples: • Country-wide “awareness-raising” study requires one nation-wide (clustered) sample • Maybe even with lower confidence levels • Tracking progress over time probably requires more accuracy, thus bigger samples • And probably requires re-sampling to prevent gaming the indicators (aside from other issues related to instrument design) • Teacher use for monitoring and loose parental accountability might require “census” of all students in classroom, not sample • Project use for monitoring school performance (or teacher performance) would require more than 12 students per school (requires 20) and adequate/inadequate classification

  14. Lot quality assurance sampling (LQAS) • Can borrow it from industry, health sector • Used if we don’t care about the average (e.g., average cwpm) but only whether given schools are “compliant” with a minimum cwpm or not • Allows one to judge a school based on a sample as small as 20 students • Note that otherwise one cannot use samples as small as 20 students to judge a specific school in terms of an average • Again, a technical subject – we don’t have time, but do remember that one can monitor with samples as small as 20, if all we care about is “compliance” vs “non-compliance”

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