Over the past few years, a large family of manifold learning algorithms have been proposed, and applied to various applications. While designing new manifold learning algorithms has attracted much research attention, fewer research efforts have been focused on out-of-sample extrapolation of learned manifold. In this paper, we propose a novel algorithm of manifold learning. The proposed algorithm, namely Local and Global Regressive Mapping (LGRM), employs local regression models to grasp the manifold structure. We additionally impose a global regression term as regularization to learn a model for out-of-sample data extrapolation. Based on the algorithm, we propose a new manifold learning framework. Our framework can be applied to any manifo...
The trend today is to use many inexpensive sensors instead of a few expensive ones, since the same a...
High dimensional data that lies on or near a low dimensional manifold can be described by a collecti...
The recovery of the intrinsic geometric structures of data collections is an important problem in da...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
Supervised manifold learning methods for data classification map high-dimensional data samples to a ...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
High dimensional data that lies on or near a low dimensional manifold can be de-scribed by a collect...
Abstract: We review the ideas, algorithms, and numerical performance of manifold-based machine learn...
A lot of manifold learning algorithms have been developed, which are used to learn a low dimensional...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
The trend today is to use many inexpensive sensors instead of a few expensive ones, since the same a...
High dimensional data that lies on or near a low dimensional manifold can be described by a collecti...
The recovery of the intrinsic geometric structures of data collections is an important problem in da...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...
Over the past few years, a large family of manifold learning algorithms have been proposed, and appl...
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
Supervised manifold learning methods for data classification map high-dimensional data samples to a ...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
High dimensional data that lies on or near a low dimensional manifold can be de-scribed by a collect...
Abstract: We review the ideas, algorithms, and numerical performance of manifold-based machine learn...
A lot of manifold learning algorithms have been developed, which are used to learn a low dimensional...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
The trend today is to use many inexpensive sensors instead of a few expensive ones, since the same a...
High dimensional data that lies on or near a low dimensional manifold can be described by a collecti...
The recovery of the intrinsic geometric structures of data collections is an important problem in da...