Over the past few decades, dimensionality reduction has been widely exploited in computer vision and pattern analysis. This paper proposes a simple but effective nonlinear dimensionality reduction algorithm, named Maximal Linear Embedding (MLE). MLE learns a parametric mapping to recover a single global low-dimensional coordinate space and yields an isometric embedding for the manifold. Inspired by geometric intuition, we introduce a reasonable definition of locally linear patch, Maximal Linear Patch (MLP), which seeks to maximize the local neighborhood in which linearity holds. The input data are first decomposed into a collection of local linear models, each depicting an MLP. These local models are then aligned into a global coordinate sp...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
The locally linear embedding (LLE) is considered an effective algorithm for dimensionality reduction...
Abstract—Over the past few decades, dimensionality reduction has been widely exploited in computer v...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...
© Springer Science+Business Media New York 2013. Dozens of manifold learning-based dimensionality re...
The problem of dimensionality reduction arises in many fields of information processing, including m...
The problem of nonlinear dimensionality reduction is considered. We focus on problems where prior in...
Spectral analysis-based dimensionality reduction algorithms are important and have been popularly ap...
We present a new manifold learning algorithm called Local Orthogonality Preserving Alignment (LOPA)....
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...
Abstract. Locally linear embedding (LLE) is a recently proposed method for unsupervised nonlinear di...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
This paper proposes a novel tensor based dimensionality reduction algorithm called Multilinear Isome...
Recently proposed algorithms for nonlinear dimensionality reduction fall broadly into two categorie...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
The locally linear embedding (LLE) is considered an effective algorithm for dimensionality reduction...
Abstract—Over the past few decades, dimensionality reduction has been widely exploited in computer v...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...
© Springer Science+Business Media New York 2013. Dozens of manifold learning-based dimensionality re...
The problem of dimensionality reduction arises in many fields of information processing, including m...
The problem of nonlinear dimensionality reduction is considered. We focus on problems where prior in...
Spectral analysis-based dimensionality reduction algorithms are important and have been popularly ap...
We present a new manifold learning algorithm called Local Orthogonality Preserving Alignment (LOPA)....
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...
Abstract. Locally linear embedding (LLE) is a recently proposed method for unsupervised nonlinear di...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
This paper proposes a novel tensor based dimensionality reduction algorithm called Multilinear Isome...
Recently proposed algorithms for nonlinear dimensionality reduction fall broadly into two categorie...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
The locally linear embedding (LLE) is considered an effective algorithm for dimensionality reduction...