# 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 ~ normal(0, 2);
}
'
## fit the model
fit <- stan(model_code = ex_model_code, chains = 4)
## extract alpha and beta with 'permuted = TRUE'
fit_ss <- extract(fit, permuted = TRUE) # fit_ss is a list
## list fit_ss should have elements with name 'alpha', 'beta', 'lp__'
alpha <- fit_ss$alpha
beta <- fit_ss$beta
## or extract alpha by just specifying pars = 'alpha'
alpha2 <- extract(fit, pars = 'alpha', permuted = TRUE)$alpha
print(identical(alpha, alpha2))
## or extract alpha by excluding beta and lp__
alpha3 <- extract(fit, pars = c('beta', 'lp__'),
permuted = TRUE, include = FALSE)$alpha
print(identical(alpha, alpha3))
## get the samples for alpha[1,1] and beta[2]
alpha_11 <- alpha[, 1, 1]
beta_2 <- beta[, 2]
## extract samples with 'permuted = FALSE'
fit_ss2 <- extract(fit, permuted = FALSE) # fit_ss2 is an array
## the dimensions of fit_ss2 should be
## "# of iterations * # of chains * # of parameters"
dim(fit_ss2)
## since the third dimension of `fit_ss2` indicates
## parameters, the names should be
## alpha[1,1], alpha[2,1], alpha[1,2], alpha[2,2],
## alpha[1,3], alpha[2,3], beta[1], beta[2], and lp__
## `lp__` (the log-posterior) is always included
## in the samples.
dimnames(fit_ss2)
# }
# NOT RUN {
# Create a stanfit object from reading CSV files of samples (saved in rstan
# package) generated by funtion stan for demonstration purpose from model as follows.
#
excode <- '
transformed data {
real y[20];
y[1] <- 0.5796; y[2] <- 0.2276; y[3] <- -0.2959;
y[4] <- -0.3742; y[5] <- 0.3885; y[6] <- -2.1585;
y[7] <- 0.7111; y[8] <- 1.4424; y[9] <- 2.5430;
y[10] <- 0.3746; y[11] <- 0.4773; y[12] <- 0.1803;
y[13] <- 0.5215; y[14] <- -1.6044; y[15] <- -0.6703;
y[16] <- 0.9459; y[17] <- -0.382; y[18] <- 0.7619;
y[19] <- 0.1006; y[20] <- -1.7461;
}
parameters {
real mu;
real<lower=0, upper=10> sigma;
vector[2] z[3];
real<lower=0> alpha;
}
model {
y ~ normal(mu, sigma);
for (i in 1:3)
z[i] ~ normal(0, 1);
alpha ~ exponential(2);
}
'
# exfit <- stan(model_code = excode, save_dso = FALSE, iter = 200,
# sample_file = "rstan_doc_ex.csv")
#
exfit <- read_stan_csv(dir(system.file('misc', package = 'rstan'),
pattern='rstan_doc_ex_[[:digit:]].csv',
full.names = TRUE))
ee1 <- extract(exfit, permuted = TRUE)
print(names(ee1))
for (name in names(ee1)) {
cat(name, "\n")
print(dim(ee1[[name]]))
}
ee2 <- extract(exfit, permuted = FALSE)
print(dim(ee2))
print(dimnames(ee2))
# }
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