Many settings of unsupervised learning can be viewed as quantization problems - the minimization of the expected quantization error subject to some restrictions. This allows the use of tools such as regularization from the theory of (supervised) risk minimization for unsupervised learning. This setting turns out to be closely related to principal curves, the generative topographic map, and robust coding. We explore connection in two ways: (1) we propose an algorithm for finding principal manifolds that can be regularized in a variety of ways; and (2) we derive uniform convergence bounds and hence bounds on the learning rates of the algorithm. In particular, we give bounds on the covering numbers which allows us to obtain nearly optimal lear...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems, namely of minimizing ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of...
We derive uniform convergence bounds and learning rates for regularized principal manifolds. This bu...
Traditional learning algorithms use only labeled data for training. However, labeled examples are of...
Manifold regularization is an approach which exploits the geometry of the marginal distribution. The...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
Manifold regularization is an approach which exploits the geometry of the marginal distribution. The...
We propose a family of learning algorithms based on a new form of regularization which allows us to ...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
A regularized version of Mixture Models is proposed to learn a principal graph from a distribution o...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of ...
Many settings of unsupervised learning can be viewed as quantization problems, namely of minimizing ...
Many settings of unsupervised learning can be viewed as quantization problems - the minimization of...
We derive uniform convergence bounds and learning rates for regularized principal manifolds. This bu...
Traditional learning algorithms use only labeled data for training. However, labeled examples are of...
Manifold regularization is an approach which exploits the geometry of the marginal distribution. The...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
Manifold regularization is an approach which exploits the geometry of the marginal distribution. The...
We propose a family of learning algorithms based on a new form of regularization which allows us to ...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
A regularized version of Mixture Models is proposed to learn a principal graph from a distribution o...
ABSTRACT Manifold regularization is an approach which exploits the geometry of the marginal distrib...
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...
We propose an automatic approximation of the intrinsic manifold for general semi-supervised learning...