High-dimensional regression problems are becoming more and more common with emerging technologies. However, in many cases data are constrained to a low dimensional manifold. The information about the output is hence contained in a much lower dimensional space, which can be expressed by an intrinsic description. By first finding the intrinsic description, a low dimensional mapping can be found to give us a two step mapping from regressors to output. In this paper a methodology aimed at manifold-constrained identification problems is proposed. A supervised and a semi-supervised method are presented, where the later makes use of given regressor data lacking associated output values for learning the manifold. As it turns out, the presented meth...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
lands High-dimensional data generated by a system with limited degrees of freedom are often constrai...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
High-dimensional regression problems are becoming more and more common with emerging technologies. H...
The trend today is to use many inexpensive sensors instead of a few expensive ones, since the same a...
A high-dimensional regression space usually causes problems in nonlinear system identification.Howeve...
High-dimensional gray-box identification is a fairly unexplored part of system identification. Never...
In this paper, we present a simulation study to investigate the role of manifold regularization in k...
We study the problem of discovering a manifold that best preserves information relevant to a nonline...
peer reviewedHigh-dimensional data generated by a system with limited degrees of freedom are often c...
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 gained in recent years a great attention in facing the problem of dimensionali...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with m...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
lands High-dimensional data generated by a system with limited degrees of freedom are often constrai...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...
High-dimensional regression problems are becoming more and more common with emerging technologies. H...
The trend today is to use many inexpensive sensors instead of a few expensive ones, since the same a...
A high-dimensional regression space usually causes problems in nonlinear system identification.Howeve...
High-dimensional gray-box identification is a fairly unexplored part of system identification. Never...
In this paper, we present a simulation study to investigate the role of manifold regularization in k...
We study the problem of discovering a manifold that best preserves information relevant to a nonline...
peer reviewedHigh-dimensional data generated by a system with limited degrees of freedom are often c...
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 gained in recent years a great attention in facing the problem of dimensionali...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
This paper presents a nonparametric Bayesian interpretation of kernel-based function learning with m...
This paper discusses non-parametric regression between Riemannian manifolds. This learning problem a...
lands High-dimensional data generated by a system with limited degrees of freedom are often constrai...
This paper presents a novel nonparametric approach to the identification of nonlinear dynamical syst...