Uniform Approximations for Randomized Hadamard Transforms with Applications
Yeshwanth Cherapanamjeri, Jelani Nelson

TL;DR
This paper establishes uniform approximation guarantees for randomized Hadamard transforms, enabling their effective use in high-dimensional machine learning tasks like kernel approximation and distance estimation.
Contribution
It provides the first uniform approximation guarantees for RHTs with Gaussian diagonals, extending theoretical understanding to high-dimensional regimes.
Findings
Uniform convergence rate comparable to Gaussian matrices
First uniform guarantees for RHT-based kernel approximation
Improved runtime guarantees for distance estimation
Abstract
Randomized Hadamard Transforms (RHTs) have emerged as a computationally efficient alternative to the use of dense unstructured random matrices across a range of domains in computer science and machine learning. For several applications such as dimensionality reduction and compressed sensing, the theoretical guarantees for methods based on RHTs are comparable to approaches using dense random matrices with i.i.d.\ entries. However, several such applications are in the low-dimensional regime where the number of rows sampled from the matrix is rather small. Prior arguments are not applicable to the high-dimensional regime often found in machine learning applications like kernel approximation. Given an ensemble of RHTs with Gaussian diagonals, , and any -Lipschitz function, , we prove that the average of over the entries of $\{M^i…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Distributed Sensor Networks and Detection Algorithms · Indoor and Outdoor Localization Technologies
