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Create a list containing the parameters of a fitted linear regression model.
params_lm(coefs, sigma = 1)
An object of class params_lm
, which is a list containing coefs
,
sigma
, and n_samples
. n_samples
is equal to the
number of rows in coefs
. The coefs
element is always converted into a
matrix.
Samples of the coefficients under sampling uncertainty.
Must be a matrix or any object coercible to a matrix such as data.frame
or data.table
.
A vector of samples of the standard error of the regression model. Default value is 1 for all samples. Only used if the model is used to randomly simulate values (rather than to predict means).
Fitted linear models are used to predict values,
This parameter object is useful for modeling health state values
when values can vary across patients and/or health states as a function of
covariates. In many cases it will, however, be simpler, and more flexible to
use a stateval_tbl
. For an example use case see the documentation for
create_StateVals.lm()
.
library("MASS")
n <- 2
params <- params_lm(
coefs = mvrnorm(n, mu = c(.5,.6),
Sigma = matrix(c(.05, .01, .01, .05), nrow = 2)),
sigma <- rgamma(n, shape = .5, rate = 4)
)
summary(params)
params
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