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Sample precision matrix
Omega.f(b, B, v, q, N)
subject specific random effects vectors
prior sum of squares matrix, scale parameter Wishart distribution (of b=random effect if prior close to 0-->no random effect)
prior df=dimension Z
dimension Z(number of random effects)
sample size at second level