Random matrices meet machine learning: a large dimensional analysis of LS-SVM

09/07/2016
by   Zhenyu Liao, et al.
0

This article proposes a performance analysis of kernel least squares support vector machines (LS-SVMs) based on a random matrix approach, in the regime where both the dimension of data p and their number n grow large at the same rate. Under a two-class Gaussian mixture model for the input data, we prove that the LS-SVM decision function is asymptotically normal with means and covariances shown to depend explicitly on the derivatives of the kernel function. This provides improved understanding along with new insights into the internal workings of SVM-type methods for large datasets.

READ FULL TEXT
research
01/11/2017

A Large Dimensional Analysis of Least Squares Support Vector Machines

In this article, a large dimensional performance analysis of kernel leas...
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...
research
09/15/2019

Inner-product Kernels are Asymptotically Equivalent to Binary Discrete Kernels

This article investigates the eigenspectrum of the inner product-type ke...
research
08/28/2023

Buy when? Survival machine learning model comparison for purchase timing

The value of raw data is unlocked by converting it into information and ...
research
07/09/2020

Behavioral analysis of support vector machine classifier with Gaussian kernel and imbalanced data

The parameters of support vector machines (SVMs) such as the penalty par...
research
09/18/2017

A Summary Of The Kernel Matrix, And How To Learn It Effectively Using Semidefinite Programming

Kernel-based learning algorithms are widely used in machine learning for...
research
12/22/2017

Diversifying Support Vector Machines for Boosting using Kernel Perturbation: Applications to Class Imbalance and Small Disjuncts

The diversification (generating slightly varying separating discriminato...

Please sign up or login with your details

Forgot password? Click here to reset