Power Calculations in Stata
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Guidelines
Data needed to perform power calculations
You must have:
- Mean and variance for outcome variable for your population
- Typically can assume mean and SD are the same for treatment and control groups if randomized
- Sample size (assuming you are calculating MDES (δ))
- If individual randomization, number of people/units (n)
- If clustered, number of clusters (k), number of units per cluster (m), intracluster correlation (ICC, ρ) and ideally, variation of cluster size
- The following standard conventions
- Significance level (α) = 0.05
- Power = 0.80 (i.e. probability of type II error (β) = 0.20
Ideally, you will also have:
- Baseline correlation of outcome with covariates
- Covariates (individual and/or cluster level) reduce the residual variance of the outcome variable, leading to lower required sample sizes
- Reducing individual level residual variance is akin to increasing # obs per cluster (bigger effect if ICC low)
- Reducing cluster level residual variance is akin to increasing # of clusters (bigger effect if ICC and m high)
- If you have baseline data, this is easy to obtain
- Including baseline autocorrelation will improve power (keep only time invariant portion of variance)
- Covariates (individual and/or cluster level) reduce the residual variance of the outcome variable, leading to lower required sample sizes
- Number of follow-up surveys
- Autocorrelation of outcome between FUP rounds
Subsection 2
Subsection 3
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This article is part of the topic Sampling & Power Calculations
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