Abstract
In this work, we analyze dimension reduction algorithms based on the Kac walk and discrete variants.
(1) For n points in , we design an optimal Johnson–Lindenstrauss (JL) transform based on the Kac walk which can be applied to any vector in time for essentially the same restriction on n as in the best-known transforms due to Ailon and Liberty, and Bamberger and Krahmer. Our algorithm is memory-optimal, and outperforms existing algorithms in regimes when n is sufficiently large and the distortion parameter is sufficiently small. In particular, this confirms a conjecture of Ailon and Chazelle, and of Oliveira, in a stronger form.
(2) The same construction gives a simple transform with optimal restricted isometry property (RIP) which can be applied in time for essentially the same range of sparsity as in the best-known such transform due to Ailon and Rauhut.
(3) We show that by fixing the angle in the Kac walk to be throughout, one obtains optimal JL and RIP transforms with almost the same running time, thereby confirming—up to a factor—a conjecture of Avron, Maymounkov, and Toledo. Our moment-based analysis of this modification of the Kac walk may also be of independent interest in connection with repeated averaging processes.
Acknowledgments
We thank Haim Avron and Sourav Chatterjee for helpful comments on an early version of this paper. We also thank an anonymous referee for their careful reading of our manuscript and valuable comments which have improved the presentation.
Citation
Vishesh Jain. Natesh S. Pillai. Ashwin Sah. Mehtaab Sawhney. Aaron Smith. "Fast and memory-optimal dimension reduction using Kac’s walk." Ann. Appl. Probab. 32 (5) 4038 - 4064, October 2022. https://doi.org/10.1214/22-AAP1784
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