In analyzing complex datasets, it is often of interest to infer lower dimensional structure underlying the higher dimensional observations. As a flexible class of nonlinear structures, it is common to focus on Riemannian manifolds. Most existing manifold learning algorithms replace the original data with lower dimensional coordinates without providing an estimate of the manifold in the observation space or using the manifold to denoise the original data. This article proposes a new methodology for addressing these problems, allowing interpolation of the estimated manifold between fitted data points. The proposed approach is motivated by novel theoretical properties of local covariance matrices constructed from noisy samples on a manifold. O...
A fundamental problem in manifold learning is to approximate a functional relationship in a data cho...
Likelihood-based, or explicit, deep generative models use neural networks to construct flexible high...
Manifold learning algorithms are successfully used in machine learning and statistical pattern recog...
A natural representation of data are the parameters which generated the data. If the parameter space...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
A natural representation of data is given by the parameters which generated the data. If the space o...
Problems with high-dimensional data optimisation in high-d parameter space is computationally expens...
The Gaussian kernel and its traditional normalizations (e.g., row-stochastic) are popular approaches...
Based on the manifold hypothesis, real-world data often lie on a low-dimensional manifold, while nor...
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...
Many approaches in the field of machine learning and data analysis rely on the assumption that the o...
Recently, studies on machine learning have focused on methods that use symmetry implicit in a specif...
In this work, we propose a novel framework for estimating the dimension of the data manifold using a...
A fundamental problem in manifold learning is to approximate a functional relationship in a data cho...
Likelihood-based, or explicit, deep generative models use neural networks to construct flexible high...
Manifold learning algorithms are successfully used in machine learning and statistical pattern recog...
A natural representation of data are the parameters which generated the data. If the parameter space...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
<p>Subspaces and manifolds are two powerful models for high dimensional signals. Subspaces model lin...
A natural representation of data is given by the parameters which generated the data. If the space o...
Problems with high-dimensional data optimisation in high-d parameter space is computationally expens...
The Gaussian kernel and its traditional normalizations (e.g., row-stochastic) are popular approaches...
Based on the manifold hypothesis, real-world data often lie on a low-dimensional manifold, while nor...
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...
Many approaches in the field of machine learning and data analysis rely on the assumption that the o...
Recently, studies on machine learning have focused on methods that use symmetry implicit in a specif...
In this work, we propose a novel framework for estimating the dimension of the data manifold using a...
A fundamental problem in manifold learning is to approximate a functional relationship in a data cho...
Likelihood-based, or explicit, deep generative models use neural networks to construct flexible high...
Manifold learning algorithms are successfully used in machine learning and statistical pattern recog...