Fast Graph Kernel with Optical Random Features

10/16/2020
by   Hashem Ghanem, et al.
0

The graphlet kernel is a classical method in graph classification. It however suffers from a high computation cost due to the isomorphism test it includes. As a generic proxy, and in general at the cost of losing some information, this test can be efficiently replaced by a user-defined mapping that computes various graph characteristics. In this paper, we propose to leverage kernel random features within the graphlet framework, and establish a theoretical link with a mean kernel metric. If this method can still be prohibitively costly for usual random features, we then incorporate optical random features that can be computed in constant time. Experiments show that the resulting algorithm is orders of magnitude faster that the graphlet kernel for the same, or better, accuracy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/16/2016

The Mondrian Kernel

We introduce the Mondrian kernel, a fast random feature approximation to...
research
10/22/2019

Kernel computations from large-scale random features obtained by Optical Processing Units

Approximating kernel functions with random features (RFs)has been a succ...
research
03/15/2012

Super-Samples from Kernel Herding

We extend the herding algorithm to continuous spaces by using the kernel...
research
11/20/2019

Random Fourier Features via Fast Surrogate Leverage Weighted Sampling

In this paper, we propose a fast surrogate leverage weighted sampling st...
research
03/20/2019

On Sampling Random Features From Empirical Leverage Scores: Implementation and Theoretical Guarantees

Random features provide a practical framework for large-scale kernel app...
research
06/09/2021

Polynomial magic! Hermite polynomials for private data generation

Kernel mean embedding is a useful tool to compare probability measures. ...
research
01/26/2021

REFORM: Fast and Adaptive Solution for Subteam Replacement

In this paper, we propose the novel problem of Subteam Replacement: give...

Please sign up or login with your details

Forgot password? Click here to reset