In this paper, we propose a novel manifold alignment method by learning the underlying common manifold with supervision of corresponding data pairs from different observation sets. Different from the previous algorithms of semi-supervised manifold alignment, our method learns the explicit corresponding projections from each original observation space to the common embedding space everywhere. Benefiting from this property, our method could process new test data directly rather than re-alignment. Furthermore, our approach doesn't have any assumption on the data structures, thus it could handle more complex cases and get better results compared with previous work. In the proposed algorithm, manifold alignment is formulated as a minimizati...
In this paper we introduce a novel approach to manifold alignment, based on Procrustes analysis. Our...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
© 2018 Elsevier Ltd Manifold learning aims to discover the low dimensional space where the input hig...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Abstract. In this paper, we study the problem of manifold alignment, which aims at “aligning ” diffe...
Manifold alignment has been found to be useful in many elds of machine learning and data mining. In ...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
© 2016, Springer-Verlag Berlin Heidelberg. In this paper, we propose a robust unsupervised algorithm...
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
We propose a new unsupervised algorithm for the automatic alignment of two manifolds of different da...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
In this paper, we propose a Generalized Unsupervised Manifold Alignment (GU-MA) method to build the ...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
In this paper we introduce a novel approach to manifold alignment, based on Procrustes analysis. Our...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
© 2018 Elsevier Ltd Manifold learning aims to discover the low dimensional space where the input hig...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
Abstract. In this paper, we study the problem of manifold alignment, which aims at “aligning ” diffe...
Manifold alignment has been found to be useful in many elds of machine learning and data mining. In ...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
© 2016, Springer-Verlag Berlin Heidelberg. In this paper, we propose a robust unsupervised algorithm...
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
Manifold learning has been demonstrated as an effective way to represent intrinsic geometrical struc...
We propose a new unsupervised algorithm for the automatic alignment of two manifolds of different da...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
In this paper, we propose a Generalized Unsupervised Manifold Alignment (GU-MA) method to build the ...
The goal of dimensionality reduction or manifold learning for a given set of high-dimensional data p...
In this paper we introduce a novel approach to manifold alignment, based on Procrustes analysis. Our...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
© 2018 Elsevier Ltd Manifold learning aims to discover the low dimensional space where the input hig...