Skip to yearly menu bar Skip to main content


Optimal Iterative Sketching Methods with the Subsampled Randomized Hadamard Transform

Jonathan Lacotte · Sifan Liu · Edgar Dobriban · Mert Pilanci

Poster Session 4 #1246

Keywords: [ Deep Learning ] [ Algorithms -> Classification; Applications -> Activity and Event Recognition; Applications -> Computer Vision; Applications ]


Random projections or sketching are widely used in many algorithmic and learning contexts. Here we study the performance of iterative Hessian sketch for least-squares problems. By leveraging and extending recent results from random matrix theory on the limiting spectrum of matrices randomly projected with the subsampled randomized Hadamard transform, and truncated Haar matrices, we can study and compare the resulting algorithms to a level of precision that has not been possible before. Our technical contributions include a novel formula for the second moment of the inverse of projected matrices. We also find simple closed-form expressions for asymptotically optimal step-sizes and convergence rates. These show that the convergence rate for Haar and randomized Hadamard matrices are identical, and asymptotically improve upon Gaussian random projections. These techniques may be applied to other algorithms that employ randomized dimension reduction.

Chat is not available.