Communication Complexity of Permutation-Invariant Functions
Badih Ghazi, Pritish Kamath, Madhu Sudan

TL;DR
This paper introduces a polynomial-time computable measure for the communication complexity of permutation-invariant functions, providing a coarse classification and exploring implications for functions with imperfectly shared randomness.
Contribution
It defines a new complexity measure for permutation-invariant functions that approximates their communication complexity up to polynomial factors and logarithmic errors.
Findings
The measure accurately predicts communication complexity within polynomial factors.
Permutation-invariant functions' complexity is linked to well-known bounds like Set-Disjointness.
Imperfectly shared randomness causes only polynomial increases in communication for these functions.
Abstract
Motivated by the quest for a broader understanding of communication complexity of simple functions, we introduce the class of "permutation-invariant" functions. A partial function is permutation-invariant if for every bijection and every , it is the case that . Most of the commonly studied functions in communication complexity are permutation-invariant. For such functions, we present a simple complexity measure (computable in time polynomial in given an implicit description of ) that describes their communication complexity up to polynomial factors and up to an additive error that is logarithmic in the input size. This gives a coarse taxonomy of the communication complexity of simple functions.…
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