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The main function in the ashr package is ash. To get minimal help:
library(ashr)
?ash
More background
The ashr ("Adaptive SHrinkage") package aims to provide simple,
generic, and flexible methods to derive "shrinkage-based" estimates
and credible intervals for unknown quantities
$\beta=(\beta_1,\dots,\beta_J)$, given only estimates of those
quantities ($\hat\beta=(\hat\beta_1,\dots, \hat\beta_J)$) and their
corresponding estimated standard errors ($s=(s_1,\dots,s_J)$).
The "adaptive" nature of the shrinkage is two-fold. First, the
appropriate amount of shrinkage is determined from the data, rather
than being pre-specified. Second, the amount of shrinkage undergone by
each $\hat\beta_j$ will depend on the standard error $s_j$:
measurements with high standard error will undergo more shrinkage than
measurements with low standard error.
Methods Outline
The methods are based on treating the vectors $\hat\beta$ and $s$ as
"observed data", and then performing inference for $\beta$ from these
observed data, using a standard hierarchical modelling framework to
combine information across $j=1,\dots,J$.
Specifically, we assume that the true $\beta_j$ values are independent
and identically distributed from some unimodal distribution $g$. By
default we assume $g$ is unimodal about zero and symmetric. You can
specify or estimate a different mode using the mode parameter. You
can allow for asymmetric $g$ by specifying
mixcompdist="halfuniform".
Then, we assume that the observations $\hat\beta_j \sim
N(\beta_j,s_j)$, or alternatively the normal assumption can be
replaced by a $t$ distribution by specifying df, the number of
degrees of freedom used to estimate $s_j$. Actually this is
important: do be sure to specify df if you can.