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28.3 Poststratification in Stan
The maximum likelihood and Bayesian estimates can be handled with the same Stan program. The model of individual votes is collapsed to a binomial, where \(A_j\) is the number of voters from group \(j\), \(a_j\) is the number of positive responses from group \(j\), and \(N_j\) is the size of group \(j\) in the population.
data {
int<lower = 1> J;
int<lower = 0> A[J];
int<lower = 0> a[J];
vector<lower = 0>[J] N;
}
parameters {
vector<lower = 0, upper = 1>[J] theta;
}
model {
a ~ binomial(A, theta);
}
generated quantities {t
real<lower = 0, upper = 1> phi = dot(N, theta) / sum(N);
}
The likelihood is vectorized, and implicitly sums over the \(j\). The prior is implicitly uniform on \((0, 1),\) the support of \(\theta.\) The summation is computed using a dot product and the sum function, which is why N
was declared as a vector rather than as an array of integers.