Enregistré dans:
Détails bibliographiques
Auteurs principaux: Cortes, Corinna, Mohri, Mehryar, Rostamizadeh, Afshin
Format: Preprint
Publié: 2012
Sujets:
Accès en ligne:https://arxiv.org/abs/1203.0550
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866917652904017920
author Cortes, Corinna
Mohri, Mehryar
Rostamizadeh, Afshin
author_facet Cortes, Corinna
Mohri, Mehryar
Rostamizadeh, Afshin
contents This paper presents new and effective algorithms for learning kernels. In particular, as shown by our empirical results, these algorithms consistently outperform the so-called uniform combination solution that has proven to be difficult to improve upon in the past, as well as other algorithms for learning kernels based on convex combinations of base kernels in both classification and regression. Our algorithms are based on the notion of centered alignment which is used as a similarity measure between kernels or kernel matrices. We present a number of novel algorithmic, theoretical, and empirical results for learning kernels based on our notion of centered alignment. In particular, we describe efficient algorithms for learning a maximum alignment kernel by showing that the problem can be reduced to a simple QP and discuss a one-stage algorithm for learning both a kernel and a hypothesis based on that kernel using an alignment-based regularization. Our theoretical results include a novel concentration bound for centered alignment between kernel matrices, the proof of the existence of effective predictors for kernels with high alignment, both for classification and for regression, and the proof of stability-based generalization bounds for a broad family of algorithms for learning kernels based on centered alignment. We also report the results of experiments with our centered alignment-based algorithms in both classification and regression.
format Preprint
id arxiv_https___arxiv_org_abs_1203_0550
institution arXiv
publishDate 2012
record_format arxiv
spellingShingle Algorithms for Learning Kernels Based on Centered Alignment
Cortes, Corinna
Mohri, Mehryar
Rostamizadeh, Afshin
Machine Learning
Artificial Intelligence
This paper presents new and effective algorithms for learning kernels. In particular, as shown by our empirical results, these algorithms consistently outperform the so-called uniform combination solution that has proven to be difficult to improve upon in the past, as well as other algorithms for learning kernels based on convex combinations of base kernels in both classification and regression. Our algorithms are based on the notion of centered alignment which is used as a similarity measure between kernels or kernel matrices. We present a number of novel algorithmic, theoretical, and empirical results for learning kernels based on our notion of centered alignment. In particular, we describe efficient algorithms for learning a maximum alignment kernel by showing that the problem can be reduced to a simple QP and discuss a one-stage algorithm for learning both a kernel and a hypothesis based on that kernel using an alignment-based regularization. Our theoretical results include a novel concentration bound for centered alignment between kernel matrices, the proof of the existence of effective predictors for kernels with high alignment, both for classification and for regression, and the proof of stability-based generalization bounds for a broad family of algorithms for learning kernels based on centered alignment. We also report the results of experiments with our centered alignment-based algorithms in both classification and regression.
title Algorithms for Learning Kernels Based on Centered Alignment
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/1203.0550