Title :
Canalizing Boolean Functions Maximize Mutual Information
Author :
Klotz, Johannes Georg ; Kracht, Dietmar ; Bossert, Martin ; Schober, Steffen
Author_Institution :
Inst. of Commun. Eng., Ulm Univ., Ulm, Germany
Abstract :
Information processing in biologically motivated Boolean networks is of interest in recent information theoretic research. One measure to quantify this ability is the well-known mutual information. Using Fourier analysis, we show that canalizing functions maximize mutual information between a single input variable and the outcome of a function with fixed expectation. A similar result can be obtained for the mutual information between a set of input variables and the output. Further, if the expectation of the function is not fixed, we obtain that the mutual information is maximized by a function only dependent on this single variable, i.e., the dictatorship function. We prove our findings for Boolean functions with uniformly distributed as well as product distributed input variables.
Keywords :
Boolean functions; Fourier analysis; information theory; Boolean functions; Fourier analysis; biologically motivated Boolean networks; dictatorship function; information processing; information theoretic research; mutual information; Biological information theory; Boolean functions; Entropy; Input variables; Irrigation; Mutual information; Vectors; Boolean functions; Boolean networks; Information theory; biological information theory; mutual information;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2014.2304952