A large number of algorithms in machine learning, from principal component analysis (PCA), and its non-linear (kernel) extensions, to more recent spectral embedding and support estimation methods, rely on estimating a linear subspace from samples. In this paper we introduce a general formulation of this problem and derive novel learning error estimates. Our results rely on natural assumptions on the spectral properties of the covariance operator associated to the data distribu-tion, and hold for a wide class of metrics between subspaces. As special cases, we discuss sharp error estimates for the reconstruction properties of PCA and spectral support estimation. Key to our analysis is an operator theoretic approach that has broad applicabilit...
A central problem in learning is to select an appropriate model. Tl. is typically done by estimating...
Adaptation using linear transforms is well known to significantly improve the performance of speech ...
Abstract. Linear subspace analysis (LSA) has become rather ubiquitous in a wide range of problems ar...
We consider learning the principal subspace of a large set of vectors from an extremely small number...
AbstractThe learning subspace method of pattern recognition has been earlier introduced by Kohonen e...
We introduce a spectral learning algorithm for latent-variable PCFGs (Matsuzaki et al., 2005; Petrov...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
In this paper, we study the problem of learning a matrix W from a set of linear measurements. Our fo...
Abstract—We describe ways to define and calculate-norm signal subspaces that are less sensitive to o...
Abstract—The regularization principals [31] lead approximation schemes to deal with various learning...
We study sparse principal components analysis in high dimensions, where p (the number of variables) ...
A large number of learning algorithms, for example, spectral clustering, kernel Principal Components...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
A central problem in learning is selection of an appropriate model. This is typically done by estima...
We show that the relevant information of a supervised learning problem is contained up to negligible...
A central problem in learning is to select an appropriate model. Tl. is typically done by estimating...
Adaptation using linear transforms is well known to significantly improve the performance of speech ...
Abstract. Linear subspace analysis (LSA) has become rather ubiquitous in a wide range of problems ar...
We consider learning the principal subspace of a large set of vectors from an extremely small number...
AbstractThe learning subspace method of pattern recognition has been earlier introduced by Kohonen e...
We introduce a spectral learning algorithm for latent-variable PCFGs (Matsuzaki et al., 2005; Petrov...
Kernel methods are nonparametric feature extraction techniques that attempt to boost the learning ca...
In this paper, we study the problem of learning a matrix W from a set of linear measurements. Our fo...
Abstract—We describe ways to define and calculate-norm signal subspaces that are less sensitive to o...
Abstract—The regularization principals [31] lead approximation schemes to deal with various learning...
We study sparse principal components analysis in high dimensions, where p (the number of variables) ...
A large number of learning algorithms, for example, spectral clustering, kernel Principal Components...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
A central problem in learning is selection of an appropriate model. This is typically done by estima...
We show that the relevant information of a supervised learning problem is contained up to negligible...
A central problem in learning is to select an appropriate model. Tl. is typically done by estimating...
Adaptation using linear transforms is well known to significantly improve the performance of speech ...
Abstract. Linear subspace analysis (LSA) has become rather ubiquitous in a wide range of problems ar...