sim2.2018HN | R Documentation |
Given a multivariate sample X
, hypothesized mean \mu_0
and covariance \Sigma_0
, it tests
H_0 : \mu_x = \mu_y \textrm{ and } \Sigma_x = \Sigma_y \quad vs\quad H_1 : \textrm{ not } H_0
using the procedure by Hyodo and Nishiyama (2018) in a similar fashion to that of Liu et al. (2017) for one-sample test.
sim2.2018HN(X, Y)
X |
an |
Y |
an |
a (list) object of S3
class htest
containing:
a test statistic.
p
-value under H_0
.
alternative hypothesis.
name of the test.
name(s) of provided sample data.
hyodo_simultaneous_2018SHT
## CRAN-purpose small example
smallX = matrix(rnorm(10*3),ncol=3)
smallY = matrix(rnorm(10*3),ncol=3)
sim2.2018HN(smallX, smallY) # run the test
## empirical Type 1 error
niter = 1000
counter = rep(0,niter) # record p-values
for (i in 1:niter){
X = matrix(rnorm(121*10), ncol=10)
Y = matrix(rnorm(169*10), ncol=10)
counter[i] = ifelse(sim2.2018HN(X,Y)$p.value < 0.05, 1, 0)
}
## print the result
cat(paste("\n* Example for 'sim2.2018HN'\n","*\n",
"* number of rejections : ", sum(counter),"\n",
"* total number of trials : ", niter,"\n",
"* empirical Type 1 error : ",round(sum(counter/niter),5),"\n",sep=""))
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