Graph explorer

Bounds on inference

Lower bounds for the average probability of error of estimating a hidden variable X given an observation of a correlated random variable Y, and Fano's inequality in particular, play a central role in information theory. In this paper, we present a lower bound for the average estimation error based on the marginal distribution of X and the principal inertias of the joint distribution matrix of X and Y. Furthermore, we discuss an information measure based on the sum of the largest principal inertias, called k-correlation, which generalizes maximal correlation. We show that k-correlation satisfies the Data Processing Inequality and is convex in the conditional distribution of Y given X. Finally, we investigate how to answer a fundamental question in inference and privacy: given an observation Y, can we estimate a function f(X) of the hidden random variable X with an average error below a certain threshold? We provide a general method for answering this question using an approach based on rate-distortion theory.

9 nodes9 linksoverview mapBounds on inference
9 nodes9 links
Bounds on inference9 visible / 9 total nodes / 24 links
Co-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipAuthorshipWorks onAuthorshipAuthorshipAuthorshipTopic signalTopic signalAuthorshipAuthorshipWBounds on inferencepreprint / 2013AFlavio du Pin CalmonResearcherAMayank VariaResearcherAMuriel MédardResearcherAMark M. ChristiansenResearcherTInformation Theory6710 worksTmath.IT6610 worksAKen R. DuffyResearcherAStefano TessaroResearcher
PaperSignal 108 links

Bounds on inference

preprint / 2013

Open