Log-rank and lifting for AND-functions
Alexander Knop, Shachar Lovett, Sam McGuire, Weiqiang Yuan

TL;DR
This paper investigates the deterministic communication complexity of AND-functions derived from boolean functions, establishing bounds related to the real rank of their communication matrices and advancing the log-rank conjecture for this class.
Contribution
It provides a near-optimal bound on the communication complexity of AND-functions in terms of real rank, and introduces a structural result on sparse polynomial representations of boolean functions.
Findings
Bounded communication complexity by polynomial in log of real rank
Established a lifting theorem relating communication complexity and decision tree complexity
Proved a small hitting set exists for monomials of sparse polynomial functions
Abstract
Let be a boolean function, and let denote the AND-function of , where denotes bit-wise AND. We study the deterministic communication complexity of and show that, up to a factor, it is bounded by a polynomial in the logarithm of the real rank of the communication matrix of . This comes within a factor of establishing the log-rank conjecturefor AND-functions with no assumptions on . Our result stands in contrast with previous results on special cases of the log-rank conjecture, which needed significant restrictions on such as monotonicity or low -degree. Our techniques can also be used to prove (within a factor) a lifting theorem for AND-functions, stating that the deterministic communication complexity of is polynomially-related to the…
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