Information Constrained Optimal Transport: From Talagrand, to Marton, to Cover

IEEE TRANSACTIONS ON INFORMATION THEORY(2023)

Cited 10|Views32
No score
Abstract
The optimal transport problem studies how to transport one measure to another in the most cost-effective way and has wide range of applications from economics to machine learning. In this paper, we introduce and study an information constrained variation of this problem. Our study yields a strengthening and generalization of Talagrand's celebrated transportation cost inequality. Following Marton's approach, we show that the new transportation cost inequality can be used to recover old and new concentration of measure results. Finally, we provide an application of this new inequality to network information theory. We show that it can be used to recover almost immediately a recent solution to a long-standing open problem posed by Cover regarding the capacity of the relay channel.
More
Translated text
Key words
Transportation,Couplings,Costs,Standards,Relays,Machine learning,Extraterrestrial measurements,Optimal transport (OT),information constraint,transportation inequality,isoperimetric inequality,concentration of measure,network information theory,relay channel
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined