Formula Size-Depth Tradeoffs for Iterated Sub-Permutation Matrix Multiplication
Benjamin Rossman

TL;DR
This paper investigates the complexity of iterated sub-permutation matrix multiplication, establishing tight size-depth tradeoffs and lower bounds for various classes of Boolean formulas, extending previous results and applying to permutation matrices.
Contribution
It provides matching upper and lower bounds for formula size-depth tradeoffs in iterated sub-permutation matrix multiplication, including non-monotone cases and permutation matrices, advancing understanding of formula complexity.
Findings
Matching size-depth bounds for monotone formulas.
Lower bounds for non-monotone formulas.
Extension of bounds to permutation matrix multiplication.
Abstract
We study the formula complexity of Iterated Sub-Permutation Matrix Multiplication, the logspace-complete problem of computing the product of -by- Boolean matrices with at most a single in each row and column. For all , this problem is solvable by size monotone formulas of two distinct types: (unbounded fan-in) formulas of depth and (semi-unbounded fan-in) formulas of -depth and -fan-in . The results of this paper give matching lower bounds for monotone and formulas for all , as well as slightly weaker lower bounds for non-monotone and formulas. These size-depth tradeoffs converge at to tight lower bounds for both unbounded-depth monotone formulas [Ros15] and…
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Taxonomy
TopicsCellular Automata and Applications · graph theory and CDMA systems · Coding theory and cryptography
