adjust_lambda.bhm {basksim} | R Documentation |
Adjust Lambda for the BHM Design
Description
Adjust Lambda for the BHM Design
Usage
## S3 method for class 'bhm'
adjust_lambda(
design,
n,
p1 = NULL,
alpha = 0.05,
design_params = list(),
iter = 1000,
n_mcmc = 10000,
prec_digits = 3,
data = NULL,
...
)
Arguments
design |
An object created with one of the |
n |
The sample size per basket. |
p1 |
Probabilities used for the simulation. If |
alpha |
The one-sided significance level. |
design_params |
A list of params that is specific to the class of
|
iter |
The number of iterations in the simulation. Is ignored if
|
n_mcmc |
Number of MCMC samples. |
prec_digits |
Number of decimal places that are considered when adjusting lambda. |
data |
A data matrix with k column with the number of responses for each
basket. Has to be generated with |
... |
Further arguments. |
Value
A list containing the greatest estimated value for lambda
with
prec_digits
decimal places which controls the family wise error rate
at level alpha
(one-sided) and the estimated family wise error rate
for the estimated lambda
.
Examples
design <- setup_bhm(k = 3, p0 = 0.2, p_target = 0.5)
adjust_lambda(design = design, n = 15,
design_params = list(tau_scale = 1), iter = 100, n_mcmc = 5000)