condentropy takes two random vectors, X and Y, as input and returns the
conditional entropy, H(X|Y), in nats (base e), according to the entropy estimator method.
If Y is not supplied the function returns the entropy of X - see entropy.
Usage
condentropy(X, Y=NULL, method="emp")
Arguments
X
data.frame denoting a random variable or random vector where columns contain variables/features and rows contain outcomes/samples.
Y
data.frame denoting a conditioning random variable or random vector where columns contain variables/features and rows contain outcomes/samples.
method
The name of the entropy estimator. The package implements four estimators :
"emp", "mm", "shrink", "sg" (default:"emp") - see details.
These estimators require discrete data values - see discretize.
Value
condentropy returns the conditional entropy, H(X|Y), of X given Y in nats.
Details
"emp" : This estimator computes the entropy of the empirical probability distribution.
"mm" : This is the Miller-Madow asymptotic bias corrected empirical estimator.
"shrink" : This is a shrinkage estimate of the entropy of a Dirichlet probability distribution.
"sg" : This is the Schurmann-Grassberger estimate of the entropy of a Dirichlet probability distribution.
References
Meyer, P. E. (2008). Information-Theoretic Variable Selection and Network Inference from Microarray Data. PhD thesis of the Universite Libre de Bruxelles.
Cover, T. M. and Thomas, J. A. (1990). Elements of Information Theory. John Wiley,
New York.