9

I would like to get the estimated coefficients of a model using rstan in an rnotebook

I have the following stan chunk:

```{stan output.var="rats"}
data {
  int<lower=0> N;
  int<lower=0> T;
  real x[T];
  real y[N,T];
  real xbar;
}
parameters {
  real alpha[N];
  real beta[N];

  real mu_alpha;
  real mu_beta;          // beta.c in original bugs model

  real<lower=0> sigmasq_y;
  real<lower=0> sigmasq_alpha;
  real<lower=0> sigmasq_beta;
}
transformed parameters {
  real<lower=0> sigma_y;       // sigma in original bugs model
  real<lower=0> sigma_alpha;
  real<lower=0> sigma_beta;

  sigma_y = sqrt(sigmasq_y);
  sigma_alpha = sqrt(sigmasq_alpha);
  sigma_beta =  sqrt(sigmasq_beta);
}
model {
  mu_alpha ~ normal(0, 100);
  mu_beta ~ normal(0, 100);
  sigmasq_y ~ inv_gamma(0.001, 0.001);
  sigmasq_alpha ~ inv_gamma(0.001, 0.001);
  sigmasq_beta ~ inv_gamma(0.001, 0.001);
  alpha ~ normal(mu_alpha, sigma_alpha); // vectorized
  beta ~ normal(mu_beta, sigma_beta);  // vectorized
  for (n in 1:N)
    for (t in 1:T) 
      y[n,t] ~ normal(alpha[n] + beta[n] * (x[t] - xbar), sigma_y);

}
generated quantities {
  real alpha0;
  alpha0 = mu_alpha - xbar * mu_beta;
}
```

I also have the following data

```{r}
df <- read_delim("https://raw.githubusercontent.com/wiki/stan-dev/rstan/rats.txt",delim = " ")

y <- as.matrix(df)
x <- c(8,15,22,29,36)
xbar <- mean(x)
N <- nrow(y)
T <- ncol(y)
```

The documentation on github shows rats_fit <- stan(file = 'https://raw.githubusercontent.com/stan-dev/example-models/master/bugs_examples/vol1/rats/rats.stan'), but since I am using a chunk I don't have a file to refer to.

I have tried stan(rats), summary(rats), print(rats), but none of these seem to work.

2 Answers 2

8

The first RMarkdown chunk calls rats <- rstan::stan_model(model_code=the_text) behind the scenes, so in order to sample from that posterior distribution you need to ultimately do rats_fit <- sampling(rats, data = list()), whose remaining arguments are pretty much the same as for stan. But you do have to call library(rstan) before all that.

1

Thanks! with your help I was able to come up with the following

library(tidyverse)
df <- read_delim("https://raw.githubusercontent.com/wiki/stan-dev/rstan/rats.txt",delim = " ")
y <- as.matrix(df)
x <- c(8,15,22,29,36)
xbar <- mean(x)
N <- nrow(y)
T <- ncol(y)
library(rstan)
options(mc.cores = parallel::detectCores())
rats_fit <- rstan::sampling(rats, 
                     data = list(y,x,xbar,N,T))
rstan::summary(rats_fit)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.