Orthogonal Random Features

10/28/2016
by   Felix X. Yu, et al.
0

We present an intriguing discovery related to Random Fourier Features: in Gaussian kernel approximation, replacing the random Gaussian matrix by a properly scaled random orthogonal matrix significantly decreases kernel approximation error. We call this technique Orthogonal Random Features (ORF), and provide theoretical and empirical justification for this behavior. Motivated by this discovery, we further propose Structured Orthogonal Random Features (SORF), which uses a class of structured discrete orthogonal matrices to speed up the computation. The method reduces the time cost from O(d^2) to O(d d), where d is the data dimensionality, with almost no compromise in kernel approximation quality compared to ORF. Experiments on several datasets verify the effectiveness of ORF and SORF over the existing methods. We also provide discussions on using the same type of discrete orthogonal structure for a broader range of applications.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/02/2017

The Unreasonable Effectiveness of Structured Random Orthogonal Embeddings

We examine a class of embeddings based on structured random matrices wit...
research
04/13/2021

On the validity of kernel approximations for orthogonally-initialized neural networks

In this note we extend kernel function approximation results for neural ...
research
05/29/2016

Recycling Randomness with Structure for Sublinear time Kernel Expansions

We propose a scheme for recycling Gaussian random vectors into structure...
research
12/07/2017

Learning Random Fourier Features by Hybrid Constrained Optimization

The kernel embedding algorithm is an important component for adapting ke...
research
03/21/2020

Scaling up Kernel Ridge Regression via Locality Sensitive Hashing

Random binning features, introduced in the seminal paper of Rahimi and R...
research
10/31/2018

Low-Precision Random Fourier Features for Memory-Constrained Kernel Approximation

We investigate how to train kernel approximation methods that generalize...
research
10/05/2021

Random matrices in service of ML footprint: ternary random features with no performance loss

In this article, we investigate the spectral behavior of random features...

Please sign up or login with your details

Forgot password? Click here to reset