Ensembles of Kernel Predictors

02/14/2012
by   Corinna Cortes, et al.
0

This paper examines the problem of learning with a finite and possibly large set of p base kernels. It presents a theoretical and empirical analysis of an approach addressing this problem based on ensembles of kernel predictors. This includes novel theoretical guarantees based on the Rademacher complexity of the corresponding hypothesis sets, the introduction and analysis of a learning algorithm based on these hypothesis sets, and a series of experiments using ensembles of kernel predictors with several data sets. Both convex combinations of kernel-based hypotheses and more general Lq-regularized nonnegative combinations are analyzed. These theoretical, algorithmic, and empirical results are compared with those achieved by using learning kernel techniques, which can be viewed as another approach for solving the same problem.

READ FULL TEXT
research
03/02/2012

Algorithms for Learning Kernels Based on Centered Alignment

This paper presents new and effective algorithms for learning kernels. I...
research
12/17/2009

New Generalization Bounds for Learning Kernels

This paper presents several novel generalization bounds for the problem ...
research
05/08/2023

The Signature Kernel

The signature kernel is a positive definite kernel for sequential data. ...
research
06/25/2012

A Geometric Algorithm for Scalable Multiple Kernel Learning

We present a geometric formulation of the Multiple Kernel Learning (MKL)...
research
07/11/2017

Multi-Task Learning Using Neighborhood Kernels

This paper introduces a new and effective algorithm for learning kernels...
research
10/09/2019

Learning Near-optimal Convex Combinations of Basis Models with Generalization Guarantees

The problem of learning an optimal convex combination of basis models ha...
research
11/27/2021

Factor-augmented tree ensembles

This article proposes an extension for standard time-series regression t...

Please sign up or login with your details

Forgot password? Click here to reset