medserial {pwr2ppl} | R Documentation |
Compute Power for Serial Mediation Effects Requires correlations between all variables as sample size. This approach calculates power for the serial mediation using joint significance (recommended)
Description
Compute Power for Serial Mediation Effects Requires correlations between all variables as sample size. This approach calculates power for the serial mediation using joint significance (recommended)
Usage
medserial(rxm1, rxm2, rxy, rm1m2, rym1, rym2, n, alpha = 0.05, rep = 1000)
Arguments
rxm1 |
Correlation between predictor (x) and first mediator (m1) |
rxm2 |
Correlation between predictor (x) and second mediator (m2) |
rxy |
Correlation between DV (y) and predictor (x) |
rm1m2 |
Correlation first mediator (m1) and second mediator (m2) |
rym1 |
Correlation between DV (y) and first mediator (m1) |
rym2 |
Correlation between DV (y) and second mediator (m2) |
n |
sample size |
alpha |
Type I error (default is .05) |
rep |
number of repetitions (1000 is default) |
Value
Power for Serial Mediated (Indirect) Effects
Examples
medserial(rxm1=.3, rxm2=.3, rxy=-.35,
rym1=-.5,rym2=-.5, rm1m2=.7,n=150)
[Package pwr2ppl version 0.5.0 Index]