Title :
A new entropy power inequality for integer-valued random variables
Author :
Haghighatshoar, Saeid ; Abbe, Emmanuel ; Telatar, Emre
Author_Institution :
EPFL, Lausanne, Switzerland
Abstract :
The entropy power inequality (EPI) provides lower bounds on the differential entropy of the sum of two independent real-valued random variables in terms of the individual entropies. Versions of the EPI for discrete random variables have been obtained for special families of distributions with the differential entropy replaced by the discrete entropy, but no universal inequality is known (beyond trivial ones). More recently, the sumset theory for the entropy function yields a sharp inequality H(X + X´) - H(X) ≥ 1/2 - o(l) when X,X´ are i.i.d. with high entropy. This paper provides the inequality H(X + X´) - H(X) ≥ g(H(X)), where X, X´ are arbitrary i.i.d. integer-valued random variables and where g is a universal strictly positive function on R+ satisfying g(0) = 0. Extensions to non identically distributed random variables and to conditional entropies are also obtained.
Keywords :
entropy; random processes; conditional entropies; differential entropy; discrete entropy; discrete random variables; entropy function yields; entropy power inequality; independent real valued random variables; integer valued random variables; sharp inequality; sumset theory; universal inequality; universal strictly positive function; Covariance matrices; Encoding; Entropy; Probability distribution; Random variables; Vectors; Entropic inequalities; Entropy power inequality; Mrs. Gerber´s lemma; Shannon sumset theory;
Conference_Titel :
Information Theory Proceedings (ISIT), 2013 IEEE International Symposium on
Conference_Location :
Istanbul
DOI :
10.1109/ISIT.2013.6620294