View source: R/interventionest.R
DAGintervention | R Documentation |
DAGintervention
takes a DAG or a sampled chain of DAGs (for example from
the partitionMCMC
function of the BiDAG package) and computes the
intervention effect of each node on all others. For binary data, this is performed
by exhaustively examining all possible binary states. This is exponentially complex in the
number of variables which should therefore be limited to around 20 or fewer. For more
variables there is a Monte Carlo version DAGinterventionMC
instead.
For continuous data, the intervention estimation is performed by extracting the edge
coefficients from their posterior distribution and using matrix inversion
following arXiv:2010.00684. User-defined scores are also supported as long as
the DAG parameters are analogous to the BDe/BGe cases, see DAGparameters
.
DAGintervention(incidences, dataParams, sample = TRUE, unrollDBN = TRUE)
incidences |
a single adjacency matrix of a list of adjacency matrices of sampled DAGs, with entry [i,j] equal to 1 when a directed edge exists from node i to node j |
dataParams |
the data and parameters used to learn the DAGs derived from the
|
sample |
logical indicating whether to sample the parameters of each node from the posterior (TRUE, default) or to take the expectation (FALSE) |
unrollDBN |
logical indicating whether to unroll a DBN to a full DAG over all time slices (TRUE, default) or to use the compact representation (FALSE) |
a single matrix or a list of matrices containing the full set of intervention effects for each input DAG. Entry [i,j] is the downstream effect on node j of intervening on node i (the difference observed at node j when setting node i to 1 and 0)
scoreparameters
scoreParam <- BiDAG::scoreparameters("bde", BiDAG::Asia) causalmat <- DAGintervention(BiDAG::Asiamat, scoreParam)
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