Abstract — We consider the problem of nonlinear dimensionality reduction: given a training set of high-dimensional data whose “intrinsic ” low dimension is assumed known, find a feature extraction map to low-dimensional space, a reconstruction map back to high-dimensional space, and a geometric description of the dimension-reduced data as a smooth manifold. We introduce a complexity-regularized quantization approach for fitting a Gaussian mixture model to the training set via a Lloyd algorithm. Complexity regularization controls the trade-off between adaptation to the local shape of the underlying manifold and global geometric consistency. The resulting mixture model is used to design the feature extraction and reconstruction maps and to de...
Dimensionality reduction and manifold learning techniques are used in numerous disciplines to find l...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
International audienceSupervised manifold learning methods learn data representations by preserving ...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
The recovery of the intrinsic geometric structures of data collections is an important problem in da...
In recent years, manifold learning has become increasingly popular as a tool for performing non-line...
Nonlinear dimensionality reduction (DR) algorithms can reveal the intrinsic characteristic of the hi...
Dimensionality reduction involves mapping a set of high dimensional input points onto a low dimensio...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
This thesis concerns the problem of dimensionality reduction through information geometric methods o...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Abstract—A novel approach is developed for nonlinear compression and reconstruction of high- or even...
Generative dimensionality reduction methods play an important role in machine learning applications ...
In recent years, nonlinear dimensionality reduction (NLDR) techniques have attracted much attention ...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...
Dimensionality reduction and manifold learning techniques are used in numerous disciplines to find l...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
International audienceSupervised manifold learning methods learn data representations by preserving ...
Manifold learning has gained in recent years a great attention in facing the problem of dimensionali...
The recovery of the intrinsic geometric structures of data collections is an important problem in da...
In recent years, manifold learning has become increasingly popular as a tool for performing non-line...
Nonlinear dimensionality reduction (DR) algorithms can reveal the intrinsic characteristic of the hi...
Dimensionality reduction involves mapping a set of high dimensional input points onto a low dimensio...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
This thesis concerns the problem of dimensionality reduction through information geometric methods o...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Abstract—A novel approach is developed for nonlinear compression and reconstruction of high- or even...
Generative dimensionality reduction methods play an important role in machine learning applications ...
In recent years, nonlinear dimensionality reduction (NLDR) techniques have attracted much attention ...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...
Dimensionality reduction and manifold learning techniques are used in numerous disciplines to find l...
We investigate how to learn a kernel matrix for high dimensional data that lies on or near a low dim...
International audienceSupervised manifold learning methods learn data representations by preserving ...