Nearly Optimal Deterministic Algorithm for Sparse Walsh-Hadamard Transform
Mahdi Cheraghchi, Piotr Indyk

TL;DR
This paper presents a deterministic, nearly optimal algorithm for computing sparse Walsh-Hadamard transforms with query efficiency, leveraging advanced lossless condensers and compressed sensing techniques, improving previous methods significantly.
Contribution
It introduces a fully deterministic, non-adaptive algorithm for sparse Walsh-Hadamard transform with near-optimal runtime based on linear lossless condensers, advancing prior expander-based approaches.
Findings
Achieves $k^{1+eta} ( ext{log } N)^{O(1)}$ runtime for fixed $eta > 0$
Constructs nearly optimal linear lossless condensers for the framework
Simplifies and improves previous expander-based sparse recovery schemes
Abstract
For every fixed constant , we design an algorithm for computing the -sparse Walsh-Hadamard transform of an -dimensional vector in time . Specifically, the algorithm is given query access to and computes a -sparse satisfying , for an absolute constant , where is the transform of and is its best -sparse approximation. Our algorithm is fully deterministic and only uses non-adaptive queries to (i.e., all queries are determined and performed in parallel when the algorithm starts). An important technical tool that we use is a construction of nearly optimal and linear lossless condensers which is a careful instantiation of the GUV condenser (Guruswami, Umans, Vadhan, JACM 2009).…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Mathematical Analysis and Transform Methods · Blind Source Separation Techniques
