bootstrapMI:
Calculate bootstrap p-values for mutual information (MI) measures
Description
This function takes a numerical matrix (or two vectors) and calculates
bootstrapped (by permutation) p-values to test if the mutual
information value is equal to zero. If the first argument is a matrix,
the p-values are calculated between all pairs of rows of the matrix.
Usage
bootstrapMI(x, y=NULL, bRep, ret="p-value")
Arguments
x
numerical matrix or vector to be analysed. If a vector, the
argument y must be informed.
y
numerical vector. Must be informed if x is a
vector. If x is a matrix, this argument is ignored. Defaults
to NULL.
bRep
number of permutation to be done in the test.
ret
character string with the value to return. Must be
'p-value' (default) for the usual p-value or 'max', to return the
maximum absolute correlation value obtained by the permutation.
Value
The result of this function is a square matrix (length equal to the
number of rows of x) if x is a matrix or a numerical
value if x and y are vectors. The result is the p-values
or maximum MI values calculated by permutation tests.
Details
The method implemented in this function is proposed by Butte and
Kohane (2000). The MI value is calculated using the function MI.
References
Butte, A.J. and Kohane, I.S. Mutual information relevance networks:
functional genomic clustering using pairwise entropy measurements. In
Pacific Symposium on Biocomputing, 5, 415-426, 2000
(http://psb.stanford.edu/psb-online/proceedings/psb00/)