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rstan (version 2.19.2)

as.array: Create array, matrix, or data.frame objects from samples in a stanfit object

Description

The samples (without warmup) included in a '>stanfit object can be coerced to an array, matrix, or data.frame. Methods are also provided for checking and setting names and dimnames.

Usage

# S3 method for stanfit
as.array(x, …) 
  # S3 method for stanfit
as.matrix(x, …)
  # S3 method for stanfit
as.data.frame(x, …)
  # S3 method for stanfit
is.array(x) 
  # S3 method for stanfit
dim(x)
  # S3 method for stanfit
dimnames(x)
  # S3 method for stanfit
names(x)
  # S3 method for stanfit
names(x) <- value

Arguments

x

An object of S4 class '>stanfit.

Additional parameters that can be passed to extract for extracting samples from x. For now, pars is the only additional parameter supported.

value

For the names replacement method, a character vector to set/replace the parameter names in x.

Value

as.array, as.matrix, and as.data.frame return an array, matrix, and data.frame, respectively.

dim and dimnames return the dim and dimnames of the array object that could be created, while names returns the third element of the dimnames, which are the names of the margins of the posterior distribution. The names assignment method allows for assigning more interpretable names to them.

is.array returns TRUE for stanfit objects that include samples; otherwise FALSE.

When the stanfit object does not contain samples, empty objects are returned from as.array, as.matrix, as.data.frame, dim, dimnames, and names.

Details

as.array and as.matrix can be applied to a stanfit object to coerce the samples without warmup to array or matrix. The as.data.frame method first calls as.matrix and then coerces this matrix to a data.frame.

The array has three named dimensions: iterations, chains, parameters. For as.matrix, all chains are combined, leaving a matrix of iterations by parameters.

See Also

S4 class '>stanfit and its method extract

Examples

Run this code
# NOT RUN {
ex_model_code <- '
  parameters {
    real alpha[2,3];
    real beta[2]; 
  } 
  model {
    for (i in 1:2) for (j in 1:3) 
      alpha[i, j] ~ normal(0, 1); 
    for (i in 1:2) 
      beta[i] ~ normal(0, 2); 
    # beta ~ normal(0, 2) // vectorized version
  } 
'

## fit the model 
fit <- stan(model_code = ex_model_code, chains = 4) 

dim(fit)
dimnames(fit)
is.array(fit) 
a <- as.array(fit)
m <- as.matrix(fit)
d <- as.data.frame(fit)
# }

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