An optimal lower bound for monotonicity testing over hypergrids (1304.5264v1)
Abstract: For positive integers $n, d$, consider the hypergrid $[n]d$ with the coordinate-wise product partial ordering denoted by $\prec$. A function $f: [n]d \mapsto \mathbb{N}$ is monotone if $\forall x \prec y$, $f(x) \leq f(y)$. A function $f$ is $\eps$-far from monotone if at least an $\eps$-fraction of values must be changed to make $f$ monotone. Given a parameter $\eps$, a \emph{monotonicity tester} must distinguish with high probability a monotone function from one that is $\eps$-far. We prove that any (adaptive, two-sided) monotonicity tester for functions $f:[n]d \mapsto \mathbb{N}$ must make $\Omega(\eps{-1}d\log n - \eps{-1}\log \eps{-1})$ queries. Recent upper bounds show the existence of $O(\eps{-1}d \log n)$ query monotonicity testers for hypergrids. This closes the question of monotonicity testing for hypergrids over arbitrary ranges. The previous best lower bound for general hypergrids was a non-adaptive bound of $\Omega(d \log n)$.