Simple and Almost Assumption-Free Out-of-Sample Bound for Random Feature Mapping

09/24/2019
by   Shusen Wang, et al.
0

Random feature mapping (RFM) is a popular method for speeding up kernel methods at the cost of losing a little accuracy. We study kernel ridge regression with random feature mapping (RFM-KRR) and establish novel out-of-sample error upper and lower bounds. While out-of-sample bounds for RFM-KRR have been established by prior work, this paper's theories are highly interesting for two reasons. On the one hand, our theories are based on weak and valid assumptions. In contrast, the existing theories are based on various uncheckable assumptions, which makes it unclear whether their bounds are the nature of RFM-KRR or simply the consequence of strong assumptions. On the other hand, our analysis is completely based on elementary linear algebra and thereby easy to read and verify. Finally, our experiments lend empirical supports to the theories.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/22/2015

Spectral Norm of Random Kernel Matrices with Applications to Privacy

Kernel methods are an extremely popular set of techniques used for many ...
research
02/24/2015

On the Equivalence between Kernel Quadrature Rules and Random Feature Expansions

We show that kernel-based quadrature rules for computing integrals can b...
research
01/29/2020

An Upper Bound of the Bias of Nadaraya-Watson Kernel Regression under Lipschitz Assumptions

The Nadaraya-Watson kernel estimator is among the most popular nonparame...
research
02/22/2019

Spatial Analysis Made Easy with Linear Regression and Kernels

Kernel methods are an incredibly popular technique for extending linear ...
research
06/11/2020

Asymptotics of Ridge(less) Regression under General Source Condition

We analyze the prediction performance of ridge and ridgeless regression ...
research
08/28/2023

Sharper dimension-free bounds on the Frobenius distance between sample covariance and its expectation

We study properties of a sample covariance estimate Σ= (𝐗_1 𝐗_1^⊤ + … + ...

Please sign up or login with your details

Forgot password? Click here to reset