We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, which maps datasets from two different domains, without any known correspondences between data instances across the datasets, to a common low-dimensional Euclidean space. Our approach integrates Multidimensional Scaling (MDS) and Wasserstein Procrustes analysis into a joint optimization problem to simultaneously generate isometric embeddings of data and learn correspondences between instances from two different datasets, while only requiring intra-dataset pairwise dissimilarities as input. This unique characteristic makes our approach applicable to datasets without access to the input features, such as solving the inexact graph matching proble...
We propose a novel approach for multiclass domain adaptation using an iterative manifold alignment t...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
We propose a new unsupervised algorithm for the automatic alignment of two manifolds of different da...
© 2016, Springer-Verlag Berlin Heidelberg. In this paper, we propose a robust unsupervised algorithm...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
In this paper, we propose a Generalized Unsupervised Manifold Alignment (GU-MA) method to build the ...
Manifold alignment has been found to be useful in many elds of machine learning and data mining. In ...
In this paper, we propose a novel manifold alignment method by learning the underlying common manifo...
In this paper we introduce a novel approach to manifold alignment, based on Procrustes analysis. Our...
Abstract. In this paper, we study the problem of manifold alignment, which aims at “aligning ” diffe...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
We propose a novel approach for multiclass domain adaptation using an iterative manifold alignment t...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
We introduce Joint Multidimensional Scaling, a novel approach for unsupervised manifold alignment, w...
In this paper, we study a family of semisupervised learning algorithms for "aligning" di...
We propose a new unsupervised algorithm for the automatic alignment of two manifolds of different da...
© 2016, Springer-Verlag Berlin Heidelberg. In this paper, we propose a robust unsupervised algorithm...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
In this paper, we propose a Generalized Unsupervised Manifold Alignment (GU-MA) method to build the ...
Manifold alignment has been found to be useful in many elds of machine learning and data mining. In ...
In this paper, we propose a novel manifold alignment method by learning the underlying common manifo...
In this paper we introduce a novel approach to manifold alignment, based on Procrustes analysis. Our...
Abstract. In this paper, we study the problem of manifold alignment, which aims at “aligning ” diffe...
Current manifold alignment methods can effectively align data sets that are drawn from a non-interse...
We propose a novel approach for multiclass domain adaptation using an iterative manifold alignment t...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
High dimensional data is usually produced by the source that only enjoys a limited number of degrees...