The Approximate Degree of DNF and CNF Formulas
Alexander A. Sherstov

TL;DR
This paper establishes nearly optimal lower bounds on the approximate degree of polynomial-size CNF and DNF formulas, resolving a key open problem in the complexity of constant-depth circuits and their communication complexity.
Contribution
It constructs polynomial-size CNF and DNF formulas with high approximate degree, fully resolving the approximate degree of AC^0 circuits and advancing understanding of their communication complexity.
Findings
CNF and DNF formulas of size polynomial in n with approximate degree Ω(n^{1-δ})
Communication complexity lower bounds for AC^0 in various models
Separation results between one-sided and two-sided approximate degree
Abstract
The approximate degree of a Boolean function is the minimum degree of a real polynomial that approximates pointwise: for all For every we construct CNF and DNF formulas of polynomial size with approximate degree essentially matching the trivial upper bound of This improves polynomially on previous lower bounds and fully resolves the approximate degree of constant-depth circuits (), a question that has seen extensive research over the past 10 years. Previously, an lower bound was known only for circuits of depth that grows with (Bun and Thaler, FOCS 2017). Moreover, our CNF and DNF formulas are the simplest possible in that they have constant width. Our result holds even for one-sided approximation, and has the…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Stochastic Gradient Optimization Techniques · Machine Learning and Algorithms
