Varini C, Degenhard A, Nattkemper TW. ISOLLE: LLE with geodesic distance. NEUROCOMPUTING. 2006;69(13-15):1768-1771.We propose an extension of the algorithm for nonlinear dimensional reduction locally linear embedding (LLE) based on the usage of the geodesic distance (ISOLLE). In LLE, each data point is reconstructed from a linear combination of its n nearest neighbors, which are typically found using the Euclidean distance. We show that the search for the neighbors performed with respect to the geodesic distance can lead to a more accurate preservation of the data structure. This is confirmed by experiments on both real-world and synthetic data. (c) 2006 Elsevier B.V. All rights reserved
Multi-dimensional scaling is an analysis tool which transforms pairwise distances between points to ...
The additive constant problem has a long history in multi-dimensional scaling and it has recently be...
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...
Varini C, Degenhard A, Nattkemper TW. ISOLLE: Locally linear embedding with geodesic distance. In: J...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
Abstract: Locally linear embedding is a kind of very competitive nonlinear dimensionality reduction...
Geodesic distance estimation for data lying on a manifold is an important issue in many applications...
The problem addressed in nonlinear dimensionality reduction, is to find lower dimensional configurat...
The locally linear embedding (LLE) is considered an effective algorithm for dimensionality reduction...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
Abstract. Locally linear embedding (LLE) is a recently proposed method for unsupervised nonlinear di...
© Springer Science+Business Media New York 2013. Dozens of manifold learning-based dimensionality re...
Abstract Besides the linear methods above mentioned, several nonlinear embedding methods have been N...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
Multi-dimensional scaling is an analysis tool which transforms pairwise distances between points to ...
The additive constant problem has a long history in multi-dimensional scaling and it has recently be...
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...
Varini C, Degenhard A, Nattkemper TW. ISOLLE: Locally linear embedding with geodesic distance. In: J...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
Abstract: Locally linear embedding is a kind of very competitive nonlinear dimensionality reduction...
Geodesic distance estimation for data lying on a manifold is an important issue in many applications...
The problem addressed in nonlinear dimensionality reduction, is to find lower dimensional configurat...
The locally linear embedding (LLE) is considered an effective algorithm for dimensionality reduction...
Roweis ST, Lawrence LK. Nonlinear Dimensionality Reduction by Locally Linear Embedding. Science. 200...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
Abstract. Locally linear embedding (LLE) is a recently proposed method for unsupervised nonlinear di...
© Springer Science+Business Media New York 2013. Dozens of manifold learning-based dimensionality re...
Abstract Besides the linear methods above mentioned, several nonlinear embedding methods have been N...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
Multi-dimensional scaling is an analysis tool which transforms pairwise distances between points to ...
The additive constant problem has a long history in multi-dimensional scaling and it has recently be...
Abstract Raw data sets taken with various capturing devices are usually multidimensional and need to...