Supermodular Approximation of Norms and Applications
Thomas Kesselheim, Marco Molinaro, and Sahil Singla

TL;DR
This paper introduces the concept of p-supermodularity for norms, providing a unified framework to develop algorithms for various optimization problems involving norms, and demonstrates that symmetric norms can be approximated by p-supermodular norms.
Contribution
It defines p-supermodularity for norms, linking supermodularity to norm functions, and shows how this concept can be used to design algorithms and approximate symmetric norms.
Findings
p-supermodularity is a sufficient criterion for algorithm design.
Symmetric norms can be approximated by p-supermodular norms.
Reframes and extends existing algorithms using supermodular analysis.
Abstract
Many classical problems in theoretical computer science involve norm, even if implicitly; for example, both XOS functions and downward-closed sets are equivalent to some norms. The last decade has seen a lot of interest in designing algorithms beyond the standard norms . Despite notable advancements, many existing methods remain tailored to specific problems, leaving a broader applicability to general norms less understood. This paper investigates the intrinsic properties of norms that facilitate their widespread use and seeks to abstract these qualities to a more general setting. We identify supermodularity -- often reserved for combinatorial set functions and characterized by monotone gradients -- as a defining feature beneficial for . We introduce the notion of -supermodularity for norms, asserting that a norm is -supermodular…
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Taxonomy
TopicsMathematical Approximation and Integration · Approximation Theory and Sequence Spaces
