Dimension Expanders via Rank Condensers
Michael A. Forbes, Venkatesan Guruswami

TL;DR
This paper develops new algebraic objects called rank condensers and uses them to construct explicit dimension expanders and two-source condensers, advancing the understanding of linear-algebraic pseudorandomness.
Contribution
It introduces and constructs rank condensers and uses them to build explicit dimension expanders and two-source condensers, simplifying previous complex constructions.
Findings
Constructed near-optimal seeded rank condensers.
Built explicit constant-degree dimension expanders.
Developed near-optimal lossy two-source condensers.
Abstract
An emerging theory of "linear-algebraic pseudorandomness" aims to understand the linear-algebraic analogs of fundamental Boolean pseudorandom objects where the rank of subspaces plays the role of the size of subsets. In this work, we study and highlight the interrelationships between several such algebraic objects such as subspace designs, dimension expanders, seeded rank condensers, two-source rank condensers, and rank-metric codes. In particular, with the recent construction of near-optimal subspace designs by Guruswami and Kopparty as a starting point, we construct good (seeded) rank condensers (both lossless and lossy versions), which are a small collection of linear maps for such that for every subset of of small rank, its rank is preserved (up to a constant factor in the lossy case) by at least one of the maps. We then…
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Taxonomy
Topicsgraph theory and CDMA systems · Coding theory and cryptography · Quantum Computing Algorithms and Architecture
