TL;DR
This paper revisits the theory of majorizing measures, providing an algorithmic approach that frames the problem as a convex optimization task, making it more accessible and computationally feasible.
Contribution
It introduces a convex programming formulation for finding the best majorizing measure and develops an algorithmic proof of the majorizing measures theorem.
Findings
Convex program for majorizing measure computation
Efficient algorithms using convex optimization techniques
Tree-based bounds derived from primal and dual solutions
Abstract
The theory of majorizing measures, extensively developed by Fernique, Talagrand and many others, provides one of the most general frameworks for controlling the behavior of stochastic processes. In particular, it can be applied to derive quantitative bounds on the expected suprema and the degree of continuity of sample paths for many processes. One of the crowning achievements of the theory is Talagrand's tight alternative characterization of the suprema of Gaussian processes in terms of majorizing measures. The proof of this theorem was difficult, and thus considerable effort was put into the task of developing both shorter and easier to understand proofs. A major reason for this difficulty was considered to be theory of majorizing measures itself, which had the reputation of being opaque and mysterious. As a consequence, most recent treatments of the theory (including by Talagrand…
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Videos
Majorizing Measures for the Optimizer· youtube
