AbstractThis paper presents a spectral analysis for an alignment matrix that arises in reconstruction of a global coordinate system from local coordinate systems through alignment in manifold learning. Some characterizations of its eigenvalues and its null space as well as a lower bound for the smallest positive eigenvalue are given, which generalize earlier results of Li et al. (2007) [4] to include a more general situation that arises in alignments of local sections of different dimensions. Our results provide a theoretical understanding of the Local Tangent Space Alignment (LTSA) method (Zhang and Zha (2004) [12]) for nonlinear manifold learning and address some computational issues related to the method
In this thesis, we investigate the problem of obtaining meaningful low dimensional representation of...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Many unsupervised algorithms for nonlinear dimensionality reduction, such as locally linear embeddin...
SUMMARY We consider an alignment algorithm for reconstructing global coordinates of a given data set...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
AbstractWe consider the performance of Local Tangent Space Alignment (Zhang & Zha [1]), one of sever...
We present a new manifold learning algorithm called Local Orthogonality Preserving Alignment (LOPA)....
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
Abstract—Over the past few decades, dimensionality reduction has been widely exploited in computer v...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
29 pages, 4 figuresIn this paper we analyze a simple method ($EIG1$) for the problem of matrix align...
© Springer Science+Business Media New York 2013. Dozens of manifold learning-based dimensionality re...
Over the past few decades, dimensionality reduction has been widely exploited in computer vision and...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
In this thesis, we investigate the problem of obtaining meaningful low dimensional representation of...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Many unsupervised algorithms for nonlinear dimensionality reduction, such as locally linear embeddin...
SUMMARY We consider an alignment algorithm for reconstructing global coordinates of a given data set...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
AbstractWe consider the performance of Local Tangent Space Alignment (Zhang & Zha [1]), one of sever...
We present a new manifold learning algorithm called Local Orthogonality Preserving Alignment (LOPA)....
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
Abstract—Over the past few decades, dimensionality reduction has been widely exploited in computer v...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
29 pages, 4 figuresIn this paper we analyze a simple method ($EIG1$) for the problem of matrix align...
© Springer Science+Business Media New York 2013. Dozens of manifold learning-based dimensionality re...
Over the past few decades, dimensionality reduction has been widely exploited in computer vision and...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
In this thesis, we investigate the problem of obtaining meaningful low dimensional representation of...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Many unsupervised algorithms for nonlinear dimensionality reduction, such as locally linear embeddin...