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bqmm uses lme4’s formula grammar, so random
effects are written inline and nested or crossed structures
come for free.
Each group gets its own intercept deviation
u_j ~ N(0, σ_u²). ranef() returns the
posterior-median deviations; VarCorr() returns
σ_u.
bqmm(y ~ x + (1 + x | group), data, tau = 0.5) # diagonal
bqmm(y ~ x + (1 + x | group), data, tau = 0.5,
cov = "unstructured") # correlatedWith cov = "diagonal" (the default) the intercept and
slope deviations are independent. With cov = "unstructured"
they share an LKJ-correlated covariance and VarCorr()
carries the correlation matrix:
fit <- bqmm(y ~ x + (1 + x | group), data, tau = 0.5, cov = "unstructured")
VarCorr(fit)
attr(VarCorr(fit), "correlation")cov = "unstructured" currently supports a
single grouping factor. Use the default diagonal
covariance for multiple or crossed terms.
bqmm(y ~ x + (1 | school/classroom), data, tau = 0.5) # nested
bqmm(y ~ x + (1 | school) + (1 | neighbourhood), data, tau = 0.5) # crossedBoth are parsed by lme4 and handled by the diagonal
model — no special syntax is needed. The variance-component mapping
(which random-effect column belongs to which
(term, coefficient)) is built directly from
lme4::mkReTrms() and is verified against
lme4’s own design matrices in the package tests.
vignette("bqmm-inference") for how the multilevel
structure feeds into the fixed-effect variance correction.These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.