Default wrapper function for the MRNETB network inference algorithm
Usage
mrnetb.wrap(data)
Arguments
data
Numeric matrix with the microarray dataset to infer the
network. Columns contain variables and rows contain samples.
Value
mrnetb.wrap returns a matrix which is the weighted adjacency
matrix of the network inferred by mrnetb algorithm.
The wrapper uses the "spearman" correlation
(can be used with continuous data)
to estimate the entropy - see build.mim.
Details
mrnetb takes the mutual information matrix as input
in order to infer the network using the maximum relevance/minimum
redundancy criterion combined with a backward elimination and a
sequential replacement - see references.
This method is a variant of mrnet.
References
Patrick E. Meyer, Daniel Marbach, Sushmita Roy and Manolis Kellis.
Information-Theoretic Inference of Gene Networks Using
Backward Elimination. The 2010 International Conference on
Bioinformatics and Computational Biology.
Patrick E. Meyer, Kevin Kontos, Frederic Lafitte and Gianluca Bontempi.
Information-theoretic inference of large transcriptional regulatory
networks. EURASIP Journal on Bioinformatics and Systems Biology, 2007.