Description Usage Arguments Examples
This function allows you to learn a directed graph from a dataset using the GENIE3 algorithm.
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df |
Dataset. |
tree.method |
Random Forest ('rf') or Extra-Trees ('et'). Default: 'rf' |
K |
Number of candidate regulators that are randomly selected at each tree node for the best split determination. Default: 'sqrt' (square root of the number of genes) |
n.trees |
Number of trees that are grown per ensemble. Default: 1000 |
min.weight |
Minimum absolute value considered in the adjacency matrix. Lower values will be replaced by zero. Default: 0.1 |
m |
Size of training set (optional). Default: nrow(df)/2 |
to |
Output format ('adjacency', 'edges', 'graph', 'igraph', or 'bnlearn') (optional). |
cluster |
The number of cores to be used (optional). Default: parallel::detectCores() |
seed |
Seed used for random selection. Default: NULL |
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