Tolerant Junta Testing and the Connection to Submodular Optimization and Function Isomorphism
Eric Blais, Cl\'ement L. Canonne, Talya Eden, Amit Levi, Dana Ron

TL;DR
This paper introduces new algorithms for tolerant testing of k-juntas, connecting submodular optimization and function isomorphism, with improved query complexities and practical applications.
Contribution
It presents a polynomial-time approximation algorithm for submodular function minimization under large constraints and develops tolerant junta testing algorithms with tradeoffs between tolerance and query complexity.
Findings
Polynomial query complexity for tolerant junta testing.
New approximation algorithm for submodular function minimization.
Query complexity depends on the smallest k for junta approximation.
Abstract
A function is a -junta if it depends on at most of its variables. We consider the problem of tolerant testing of -juntas, where the testing algorithm must accept any function that is -close to some -junta and reject any function that is -far from every -junta for some and . Our first result is an algorithm that solves this problem with query complexity polynomial in and . This result is obtained via a new polynomial-time approximation algorithm for submodular function minimization (SFM) under large cardinality constraints, which holds even when only given an approximate oracle access to the function. Our second result considers the case where . We show how to obtain a smooth tradeoff between the amount of tolerance and the query complexity in this…
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