Meth object.
Meth.sim( Ni = 100, Nm = 2, Nr = 3, nr = Nr, alpha = rep(0,Nm), beta = rep(1,Nm), mu.range = c(0, 100), sigma.mi = rep(5,Nm), sigma.ir = 2.5, sigma.mir = rep(5,Nm), m.thin = 1, i.thin = 1 )nr, the number of replicates for
each (meth,item) pair is uniformly distributed on the points
nr:Nr, otherwise nr is ignored. Different number of
replicates is only meaningful if replicates are not linked, hence
nr is also ignored when sigma.ir>0. Ni is given, the values of that
vector will be used as "true" means.m.thin and i.thin are given the thinning is by their
componentwise product.Meth object, i.e. dataframe
with columns meth, item, repl and y,
representing results from a method comparison study.
item by repl interaction
(with standard deviation for method $m$ the corresponding component of the
vector $sigma_ir$), $c_mi$ is a random meth
by item interaction (with standard deviation for method $m$ the
corresponding component of the vector $sigma_mi$) and
$e_mir$ is a residual error term (with standard deviation
for method $m$ the corresponding component of the vector
$sigma_mir$). The $mu_i$'s are uniformly spaced
in a range specified by mu.range.
summary.Meth,
plot.Meth,
MCmcmc Meth.sim( Ni=4, Nr=3 )
xx <- Meth.sim( Nm=3, Nr=5, nr=2, alpha=1:3, beta=c(0.7,0.9,1.2), m.thin=0.7 )
summary( xx )
plot( xx )
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