LRT_FE {boutliers} | R Documentation |
Likelihood ratio test using a mean-shifted model by the fixed-effect model
Description
Implementing the likelihood ratio tests using the mean-shifted model for the fixed-effect model. The bootstrap p-values are provided.
Usage
LRT_FE(y, v, B=2000, alpha=0.05)
Arguments
y |
A vector of the outcome measure estimates (e.g., MD, SMD, log OR, log RR, RD) |
v |
A vector of the variance estimate of |
B |
The number of bootstrap resampling (default: 2000) |
alpha |
The significance level (default: 0.05) |
Value
Results of the likelihood ratio tests involving bootstrap p-values. The outputs are ordered by the p-values.
-
id
: ID of the study. -
LR
: The likelihood ratio statistic for based on the mean-shifted model. -
Q
:1-alpha
th percentile for the bootstrap distribution of the likelihood ratio statistic. -
P
: The bootstrap p-value for the likelihood ratio statistic.
Examples
require(metafor)
data(SMT)
edat2 <- escalc(m1i=m1,sd1i=s1,n1i=n1,m2i=m2,sd2i=s2,n2i=n2,measure="MD",data=SMT)
LRT_FE(edat2$yi, edat2$vi, B=10)
# This is an example command for illustration. B should be >= 1000.
[Package boutliers version 1.1-2 Index]