Tight Bounds for Noisy Computation of High-Influence Functions, Connectivity, and Threshold
Yuzhou Gu, Xin Li, Yinzhan Xu

TL;DR
This paper establishes tight bounds on the noisy query complexity for high-influence Boolean functions, graph connectivity, and threshold problems, advancing understanding of computation under noise.
Contribution
It provides the first general lower bounds for noisy query complexity of functions with high influence, and tight bounds for graph connectivity and threshold problems.
Findings
Boolean functions with influence Ω(n) require Θ(n log n) queries
Graph connectivity requires Θ(n^2 log n) noisy queries
Exact query bounds for k-threshold and counting problems are established
Abstract
In the noisy query model, the (binary) return value of every query (possibly repeated) is independently flipped with some fixed probability . In this paper, we obtain tight bounds on the noisy query complexity of several fundamental problems. Our first contribution is to show that any Boolean function with total influence has noisy query complexity . Previous works often focus on specific problems, and it is of great interest to have a characterization of noisy query complexity for general functions. Our result is the first noisy query complexity lower bound of this generality, beyond what was known for random Boolean functions [Reischuk and Schmeltz, FOCS 1991]. Our second contribution is to prove that Graph Connectivity has noisy query complexity . In this problem, the goal is to determine whether an undirected graph…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Stochastic Gradient Optimization Techniques · Neural Networks and Applications
