The problem addressed in nonlinear dimensionality reduction, is to find lower dimensional configurations of high dimensional data, thereby revealing underlying structure. One popular method in this regard is the Isomap algorithm, where local information is used to find approximate geodesic distances. From such distance estimations, lower dimensional representations, accurate on a global scale, are obtained by multidimensional scaling. The property of global approximation sets Isomap in contrast to many competing methods, which approximate only locally. A serious drawback of Isomap is that it is topologically instable, i.e., that incorrectly chosen algorithm parameters or perturbations of data may abruptly alter the resulting configurations....
Most nonlinear dimensionality reduction approaches such as Isomap heavily depend on the neighborhood...
We present a new algorithm for nonlinear dimensionality reduction that consistently uses global info...
While analyzing multidimensional data, we often have to reduce their dimensionality so that to prese...
The problem addressed in nonlinear dimensionality reduction, is to find lower dimensional configurat...
Manifold learning and nonlinear dimensionality reduction addresses the problem of detecting possibly...
peer reviewedWe present a fast alternative for the Isomap algorithm. A set of quantizers is fit to t...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
Abstract. We present a fast alternative for the Isomap algorithm. A set of quantizers is ¯t to the d...
Recently proposed algorithms for nonlinear dimensionality reduction fall broadly into two categorie...
Varini C, Degenhard A, Nattkemper TW. ISOLLE: LLE with geodesic distance. NEUROCOMPUTING. 2006;69(13...
International audienceThe fundamental problem of distance geometry consists in finding a realization...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
Abstract Besides the linear methods above mentioned, several nonlinear embedding methods have been N...
The problem of nonlinear dimensionality reduction is considered. We focus on problems where prior in...
Most nonlinear dimensionality reduction approaches such as Isomap heavily depend on the neighborhood...
We present a new algorithm for nonlinear dimensionality reduction that consistently uses global info...
While analyzing multidimensional data, we often have to reduce their dimensionality so that to prese...
The problem addressed in nonlinear dimensionality reduction, is to find lower dimensional configurat...
Manifold learning and nonlinear dimensionality reduction addresses the problem of detecting possibly...
peer reviewedWe present a fast alternative for the Isomap algorithm. A set of quantizers is fit to t...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
This report discusses one paper for linear data dimensionality reduction, Eigenfaces, and two recent...
Abstract. We present a fast alternative for the Isomap algorithm. A set of quantizers is ¯t to the d...
Recently proposed algorithms for nonlinear dimensionality reduction fall broadly into two categorie...
Varini C, Degenhard A, Nattkemper TW. ISOLLE: LLE with geodesic distance. NEUROCOMPUTING. 2006;69(13...
International audienceThe fundamental problem of distance geometry consists in finding a realization...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
Abstract Besides the linear methods above mentioned, several nonlinear embedding methods have been N...
The problem of nonlinear dimensionality reduction is considered. We focus on problems where prior in...
Most nonlinear dimensionality reduction approaches such as Isomap heavily depend on the neighborhood...
We present a new algorithm for nonlinear dimensionality reduction that consistently uses global info...
While analyzing multidimensional data, we often have to reduce their dimensionality so that to prese...