A Unified Lower Bound on the Noisy Query Complexity of Boolean Functions

Abstract

We study the query complexity of Boolean functions f: \0, 1\n → \0, 1\ in the noisy query model introduced by Feige, Raghavan, Peleg and Upfal [SICOMP 1994]. In this model, an algorithm can adaptively query the bits of an input vector, but each query result is independently flipped with constant probability p ∈ (0, 1/2); repeated queries are allowed. The noisy query complexity Np(f) of a function f is defined as the minimum expected number of queries needed to compute f(x) with error probability at most 1/3, for the worst case input x. We prove a general lower bound on Np(f) based on degree statistics of certain subgraphs of the Boolean hypercube. This is the first general lower bound beyond those implied by the simple observation that Np(f) is lower bounded by the randomized query complexity. We show that this recovers (up to a constant factor) most previously known lower bounds on the noisy query complexity of Boolean functions, providing a unified framework for understanding these results and simplifying the proofs in several cases. Furthermore, this resolves in the affirmative an open problem of Gu, Li and Xu [COLT 2025] that Np(f) = Ω(I(f) I(f)), where I(f) denotes the total influence of f. We also apply our general lower bound to obtain tight bounds on the noisy query complexity for several new functions.

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