Georgios Angelopoulos, Arun Paidimarri, et al.
IEEE TCAS-I
We explore properties and applications of the principal inertia components (PICs) between two discrete random variables and . The PICs lie in the intersection of information and estimation theory, and provide a fine-grained decomposition of the dependence between and . Moreover, the PICs describe which functions of can or cannot be reliably inferred (in terms of MMSE), given an observation of . We demonstrate that the PICs play an important role in information theory, and they can be used to characterize information-theoretic limits of certain estimation problems. In privacy settings, we prove that the PICs are related to the fundamental limits of perfect privacy.
Georgios Angelopoulos, Arun Paidimarri, et al.
IEEE TCAS-I
Jiachun Liao, Lalitha Sankar, et al.
Allerton 2016
Flavio Du Pin Calmon, Dennis Wei, et al.
NeurIPS 2017
Flavio Du Pin Calmon, Dennis Wei, et al.
IEEE JSTSP