Markov Chain Monte Carlo for Wakefield's Hierarchial Ecological Inference Model
‘MCMChierEI’ is used to fit Wakefield's hierarchical ecological inference model for partially observed 2 x 2 contingency tables.
MCMChierEI( r0, r1, c0, c1, burnin = 5000, mcmc = 50000, thin = 1, verbose = 0, seed = NA, m0 = 0, M0 = 2.287656, m1 = 0, M1 = 2.287656, a0 = 0.825, b0 = 0.0105, a1 = 0.825, b1 = 0.0105, ... )
r0 |
(ntables \times 1) vector of row sums from row 0. |
r1 |
(ntables \times 1) vector of row sums from row 1. |
c0 |
(ntables \times 1) vector of column sums from column 0. |
c1 |
(ntables \times 1) vector of column sums from column 1. |
burnin |
The number of burn-in scans for the sampler. |
mcmc |
The number of mcmc scans to be saved. |
thin |
The thinning interval used in the simulation. The number of mcmc iterations must be divisible by this value. |
verbose |
A switch which determines whether or not the progress of the
sampler is printed to the screen. If |
seed |
The seed for the random number generator. If NA, the Mersenne
Twister generator is used with default seed 12345; if an integer is passed
it is used to seed the Mersenne twister. The user can also pass a list of
length two to use the L'Ecuyer random number generator, which is suitable
for parallel computation. The first element of the list is the L'Ecuyer
seed, which is a vector of length six or NA (if NA a default seed of
|
m0 |
Prior mean of the μ_0 parameter. |
M0 |
Prior variance of the μ_0 parameter. |
m1 |
Prior mean of the μ_1 parameter. |
M1 |
Prior variance of the μ_1 parameter. |
a0 |
|
b0 |
|
a1 |
|
b1 |
|
... |
further arguments to be passed |
Consider the following partially observed 2 by 2 contingency table for unit t where t=1,…,ntables:
| Y=0 | | Y=1 | | | |
--------- | ------------ | ------------ | ------------ |
X=0 | | Y_{0t} | | | | r_{0t} |
--------- | ------------ | ------------ | ------------ |
X=1 | | Y_{1t} | | | | r_{1t} |
--------- | ------------ | ------------ | ------------ |
| c_{0t} | | c_{1t} | | N_t |
Where r_{0t}, r_{1t}, c_{0t}, c_{1t}, and N_t are non-negative integers that are observed. The interior cell entries are not observed. It is assumed that Y_{0t}|r_{0t} \sim \mathcal{B}inomial(r_{0t}, p_{0t}) and Y_{1t}|r_{1t} \sim \mathcal{B}inomial(r_{1t}, p_{1t}). Let θ_{0t} = log(p_{0t}/(1-p_{0t})), and θ_{1t} = log(p_{1t}/(1-p_{1t})).
The following prior distributions are assumed: θ_{0t} \sim \mathcal{N}(μ_0, σ^2_0), θ_{1t} \sim \mathcal{N}(μ_1, σ^2_1). θ_{0t} is assumed to be a priori independent of θ_{1t} for all t. In addition, we assume the following hyperpriors: μ_0 \sim \mathcal{N}(m_0, M_0), μ_1 \sim \mathcal{N}(m_1, M_1), σ^2_0 \sim \mathcal{IG}(a_0/2, b_0/2), and σ^2_1 \sim \mathcal{IG}(a_1/2, b_1/2).
The default priors have been chosen to make the implied prior distribution for p_{0} and p_{1} approximately uniform on (0,1).
Inference centers on p_0, p_1, μ_0, μ_1, σ^2_0, and σ^2_1. Univariate slice sampling (Neal, 2003) along with Gibbs sampling is used to sample from the posterior distribution.
See Section 5.4 of Wakefield (2003) for discussion of the priors
used here. MCMChierEI
departs from the Wakefield model in
that the mu0
and mu1
are here assumed to be drawn
from independent normal distributions whereas Wakefield assumes
they are drawn from logistic distributions.
An mcmc object that contains the sample from the posterior distribution. This object can be summarized by functions provided by the coda package.
Jonathan C. Wakefield. 2004. “Ecological Inference for 2 x 2 Tables.” Journal of the Royal Statistical Society, Series A. 167(3): 385445.
Radford Neal. 2003. “Slice Sampling" (with discussion). Annals of Statistics, 31: 705-767.
Andrew D. Martin, Kevin M. Quinn, and Jong Hee Park. 2011. “MCMCpack: Markov Chain Monte Carlo in R.”, Journal of Statistical Software. 42(9): 1-21. https://www.jstatsoft.org/v42/i09/.
Daniel Pemstein, Kevin M. Quinn, and Andrew D. Martin. 2007. Scythe Statistical Library 1.0. http://scythe.lsa.umich.edu.
Martyn Plummer, Nicky Best, Kate Cowles, and Karen Vines. 2006. “Output Analysis and Diagnostics for MCMC (CODA)”, R News. 6(1): 7-11. https://CRAN.R-project.org/doc/Rnews/Rnews_2006-1.pdf.
## Not run: ## simulated data example set.seed(3920) n <- 100 r0 <- round(runif(n, 400, 1500)) r1 <- round(runif(n, 100, 4000)) p0.true <- pnorm(rnorm(n, m=0.5, s=0.25)) p1.true <- pnorm(rnorm(n, m=0.0, s=0.10)) y0 <- rbinom(n, r0, p0.true) y1 <- rbinom(n, r1, p1.true) c0 <- y0 + y1 c1 <- (r0+r1) - c0 ## plot data tomogplot(r0, r1, c0, c1) ## fit exchangeable hierarchical model post <- MCMChierEI(r0,r1,c0,c1, mcmc=40000, thin=5, verbose=100, seed=list(NA, 1)) p0meanHier <- colMeans(post)[1:n] p1meanHier <- colMeans(post)[(n+1):(2*n)] ## plot truth and posterior means pairs(cbind(p0.true, p0meanHier, p1.true, p1meanHier)) ## End(Not run)
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