sd.rtm.VoR {pwrFDR} | R Documentation |
Extractor function for asymptotic sd[V_m/R_m] under selected FDP control method
Description
A function which extracts the asymptotic standard deviation for the
false discovery proportion, V_m/R_m, under the selected FDP control method
from the supplied pwr
object, which is the result of a call to
the main function, pwrFDR.
Usage
sd.rtm.VoR(object)
Arguments
object |
An object of class, |
Details
The false discovery proportion (FDP), V_m/R_m, under the selected FDP control method, is the proportion of null distributed test statistics that were deemed significant calls by the FDP control method. The most well known of available FDP methods is the Benjamini-Hochberg False Discovery Rate (BH-FDR) procedure. It ensures that the expected value of the FDP will be less than alpha, E[FDP] < alpha. The other two included FDP control methods, "Romano" and "BHCLT", control the probability that the FDP exceeds a given value, delta:
P( V_m/R_m > \delta ) < \alpha
In most cases, the choice \delta=\alpha
is appropriate but
\delta
is a distinct parameter to allow greater flexibility.
The choice "Auto" will select the most appropriate choice from the
three, BHFDR, BHCLT and Romano. If the asymptotic standard error,
sd.rtm.VoR/m^0.5 is greater than a control parameter (default value
10%), then one of the choices "BHCLT" or "Romano" will be made. As
the "Romano" FDP control method is more conservative, there is a
preference for the "BHCLT" method, which can be used if the number
of simultaneous tests, m, is larger than 50. All of this is
handled internally within the function pwrFDR
. These
extractor functions exist to allow the user 'under the hood'.
Value
Returns the asymptotic standard deviation of the false discovery proportion, sd[V_m/R_m], as an un-named numeric.
Author(s)
Grant Izmirlian <izmirlig at mail dot nih dot gov>
References
Izmirlian G. (2020) Strong consistency and asymptotic normality for quantities related to the Benjamini-Hochberg false discovery rate procedure. Statistics and Probability Letters; 108713, <doi:10.1016/j.spl.2020.108713>.
Izmirlian G. (2017) Average Power and \lambda
-power in
Multiple Testing Scenarios when the Benjamini-Hochberg False
Discovery Rate Procedure is Used. <arXiv:1801.03989>
See Also
Examples
rslt.BHFDR <- pwrFDR(effect.size=0.79, n.sample=46, r.1=0.05, alpha=0.15)
rslt.Auto.1 <- pwrFDR(effect.size=0.79, n.sample=46, r.1=0.05, alpha=0.15, N.tests=51,
FDP.control.method="Auto")
rslt.Auto.2 <- pwrFDR(effect.size=0.79, n.sample=46, r.1=0.05, alpha=0.15, N.tests=49,
FDP.control.method="Auto")
## Asymptotic standard deviation under BHFDR
sdrtmVoRBHFDR <- sd.rtm.VoR(rslt.BHFDR)
## Asymptotic standard deviation under BHCLT
sdrtmVoRAuto1 <- sd.rtm.VoR(rslt.Auto.1)
## Asymptotic standard deviation under Romano
sdrtmVoRAuto2 <- sd.rtm.VoR(rslt.Auto.2)