© Institute of Mathematical Statistics, 2020. In the absence of explicit regularization, Kernel “Ridgeless” Regression with nonlinear kernels has the potential to fit the training data perfectly. It has been observed empirically, however, that such interpolated solutions can still generalize well on test data. We isolate a phenomenon of implicit regularization for minimum-norm interpolated solutions which is due to a combination of high dimensionality of the input data, curvature of the kernel function and favorable geometric properties of the data such as an eigenvalue decay of the empirical covariance and kernel matrices. In addition to deriving a data-dependent upper bound on the out-of-sample error, we present experimental evidence sugg...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
© 2019 by the author(s). We show that classical learning methods interpolating the training data can...
We study the average CVloo stability of kernel ridge-less regression and derive corresponding risk b...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...
A large number of signal recovery problems are not well-posed-if not ill-posed-that require extra re...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
The purpose of this chapter is to present a theoretical framework for the problem of learning from e...
We examine the necessity of interpolation in overparameterized models, that is, when achieving optim...
We study the problem of discovering a manifold that best preserves information relevant to a nonline...
AbstractWe consider a coefficient-based regularized regression in a data dependent hypothesis space....
We consider the problem of nonparametric regression, consisting of learning an arbitrary mapping f :...
© 2019 by the author(s). We show that classical learning methods interpolating the training data can...
AbstractA learning algorithm for regression is studied. It is a modified kernel projection machine (...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
© 2019 by the author(s). We show that classical learning methods interpolating the training data can...
We study the average CVloo stability of kernel ridge-less regression and derive corresponding risk b...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
We consider a learning algorithm generated by a regularization scheme with a concave regularizer for...
A large number of signal recovery problems are not well-posed-if not ill-posed-that require extra re...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
The purpose of this chapter is to present a theoretical framework for the problem of learning from e...
We examine the necessity of interpolation in overparameterized models, that is, when achieving optim...
We study the problem of discovering a manifold that best preserves information relevant to a nonline...
AbstractWe consider a coefficient-based regularized regression in a data dependent hypothesis space....
We consider the problem of nonparametric regression, consisting of learning an arbitrary mapping f :...
© 2019 by the author(s). We show that classical learning methods interpolating the training data can...
AbstractA learning algorithm for regression is studied. It is a modified kernel projection machine (...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
© 2019 by the author(s). We show that classical learning methods interpolating the training data can...
We study the average CVloo stability of kernel ridge-less regression and derive corresponding risk b...