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Kronecker Products, Low-Depth Circuits, and Matrix Rigidity (2102.11992v1)

Published 24 Feb 2021 in cs.DS, cs.CC, and math.CO

Abstract: For a matrix $M$ and a positive integer $r$, the rank $r$ rigidity of $M$ is the smallest number of entries of $M$ which one must change to make its rank at most $r$. There are many known applications of rigidity lower bounds to a variety of areas in complexity theory, but fewer known applications of rigidity upper bounds. In this paper, we use rigidity upper bounds to prove new upper bounds in a few different models of computation. Our results include: $\bullet$ For any $d> 1$, and over any field $\mathbb{F}$, the $N \times N$ Walsh-Hadamard transform has a depth-$d$ linear circuit of size $O(d \cdot N{1 + 0.96/d})$. This circumvents a known lower bound of $\Omega(d \cdot N{1 + 1/d})$ for circuits with bounded coefficients over $\mathbb{C}$ by Pudl\'ak (2000), by using coefficients of magnitude polynomial in $N$. Our construction also generalizes to linear transformations given by a Kronecker power of any fixed $2 \times 2$ matrix. $\bullet$ The $N \times N$ Walsh-Hadamard transform has a linear circuit of size $\leq (1.81 + o(1)) N \log_2 N$, improving on the bound of $\approx 1.88 N \log_2 N$ which one obtains from the standard fast Walsh-Hadamard transform. $\bullet$ A new rigidity upper bound, showing that the following classes of matrices are not rigid enough to prove circuit lower bounds using Valiant's approach: $-$ for any field $\mathbb{F}$ and any function $f : {0,1}n \to \mathbb{F}$, the matrix $V_f \in \mathbb{F}{2n \times 2n}$ given by, for any $x,y \in {0,1}n$, $V_f[x,y] = f(x \wedge y)$, and $-$ for any field $\mathbb{F}$ and any fixed-size matrices $M_1, \ldots, M_n \in \mathbb{F}{q \times q}$, the Kronecker product $M_1 \otimes M_2 \otimes \cdots \otimes M_n$. This generalizes recent results on non-rigidity, using a simpler approach which avoids needing the polynomial method.

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