A practical use of regularization for supervised learning with kernel methods (original) (raw)

Fast Randomized Kernel Ridge Regression with Statistical Guarantees

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2015

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Reduced rank kernel ridge regression

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Fast Randomized Kernel Methods With Statistical Guarantees

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2003

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2005 International Conference on Neural Networks and Brain, 2005

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genova genova

2005

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2017

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Failure and success of the spectral bias prediction for Kernel Ridge Regression: the case of low-dimensional data

Antonio Sclocchi

ArXiv, 2022

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Ridge Regression Learning Algorithm in Dual Variables

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Consistency and robustness of kernel based regression

Andreas Christmann

2005

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Kernel Learning by Unconstrained Optimization

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Journal of Machine Learning Research, 2009

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Understanding kernel ridge regression: Common behaviors from simple functions to density functionals

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An identity for kernel ridge regression

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Theoretical Computer Science, 2013

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Stochastic low-rank kernel learning for regression

Sandrine Anthoine

2012

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Consistency and robustness of kernel-based regression in convex risk minimization

Andreas Christmann

Bernoulli, 2007

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Kernel partial least squares regression in reproducing kernel hilbert space

Leonardo Jose Trejo

The Journal of Machine Learning Research, 2002

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Regularization and statistical learning theory for data analysis

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Sparse kernel learning with LASSO and Bayesian inference algorithm

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Stéphane Canu

2007

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