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Caltech

Theory of Computing Seminar

Thursday, September 29, 2016
1:30pm to 2:30pm
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Annenberg 213
The entropy power inequality for the Renyi entropy
Arnaud Marsiglietti, Caltech,

Abstract:

The entropy power inequality, fundamental in Information Theory, states that for every independent continuous random vector X,Y in R^n$, one has N(X+Y) \geq N(X) + N(Y). Here N(X) denotes the entropy power of X, defined as N(X) = e^{2h(X)/n}, where h(X) is the entropy of X.

In this talk, we will see that the entropy power inequality can be extended to the Renyi entropy.

(based on a joint work with S. Bobkov) 
For more information, please contact Thomas Vidick by email at [email protected].