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PowerUpR (version 0.1.2)

mdes.bira2r1: Model 2.3: MDES Calculator for 2-Level Random Effects Blocked Individual Random Assignment Designs, Individuals Randomized within Blocks

Description

mdes.bira2r1 calculates minimum detectable effect size (MDES) for designs with 2-levels where level 1 units are randomly assigned to treatment and control groups within level 2 units (random blocks).

Usage

mdes.bira2r1(power=.80, alpha=.05, two.tail=TRUE, rho2, omega2, P=.50, g2=0, R12=0, RT22=0, n, J, ...)

Arguments

power
statistical power (1 - type II error).
alpha
probability of type I error.
two.tail
logical; TRUE for two-tailed hypothesis testing, FALSE for one-tailed hypothesis testing.
rho2
proportion of variance in the outcome explained by level 2 units.
omega2
treatment effect heterogeneity as ratio of treatment effect variance among level 2 units to the residual variance at level 2.
P
average proportion of level 1 units randomly assigned to treatment within level 2 units.
g2
number of covariates at level 2.
R12
proportion of level 1 variance in the outcome explained by level 1 covariates.
RT22
proportion of treatment effect variance among level 2 units explained by level 2 covariates.
n
harmonic mean of level 1 units across level 2 units (or simple average).
J
level 2 sample size.
...
to handle extra parameters passed from other functions, do not define any additional parameters.

Value

Details

MDES formula and further definition of design parameters can be found in Dong & Maynard (2013).

References

Dong & Maynard (2013). PowerUp!: A Tool for Calculating Minum Detectable Effect Sizes and Minimum Required Sample Sizes for Experimental and Quasi-Experimental Design Studies,Journal of Research on Educational Effectiveness, 6(1), 24-6.

See Also

power.bira2r1, mrss.bira2r1, optimal.bira2r1

Examples

Run this code
## Not run: 
# 
#  mdes.bira2r1(rho2=.35, omega2=.10,
#              n=83, J=480)
# 
#   ## End(Not run)

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