simulatemixdata {mixsqp} | R Documentation |
Create likelihood matrix from simulated data set
Description
Simulate a data set, then compute the conditional likelihood matrix under a univariate normal likelihood and a mixture-of-normals prior. This models a simple nonparametric Empirical Bayes method applied to simulated data.
Usage
simulatemixdata(
n,
m,
simtype = c("n", "nt"),
log = FALSE,
normalize.rows = !log
)
Arguments
n |
Positive integer specifying the number of samples to generate and, consequently, the number of rows of the likelihood matrix L. |
m |
Integer 2 or greater specifying the number of mixture components. |
simtype |
The type of data to simulate. If |
log |
If |
normalize.rows |
If |
Value
simulatemixdata
returns a list with three list
elements:
x |
The vector of simulated random numbers (it has length n). |
s |
The standard deviations of the mixture components in the
mixture-of-normals prior. The rules for selecting the standard
deviations are based on the |
L |
The n x m conditional likelihood matrix, in which
individual entries (i,j) of the likelihood matrix are given by the
normal density function with mean zero and variance |
Examples
# Generate the likelihood matrix for a data set with 1,000 samples
# and a nonparametric Empirical Bayes model with 20 mixture
# components.
dat <- simulatemixdata(1000,20)