Manifold learning is a widely used statistical tool which reduces the dimensionality of a data set while aiming to maintain both local and global properties of the data. We present a novel manifold learning technique which aligns local hyperplanes to build a global representation of the data. A Minimum Spanning Tree provides the skeleton needed to traverse the manifold so that the local hyperplanes can be merged using parallel projections to build a global hyperplane of the data. We show state of the art results when compared against existing manifold learning algorithm on both artificial and real world image data
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
Manifold learning is a widely used statistical tool which reduces the dimensionality of a data set w...
We present a framework for the reduction of dimensionality of a data set via manifold learning. Usin...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
We present a simple variant of the k-d tree which automatically adapts to intrinsic low dimensional ...
Graph representation learning is an effective method to represent graph data in a low dimensional sp...
We present a new algorithm, Locally Smooth Manifold Learning (LSML), that learns a warping function ...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...
We claim and present arguments to the effect that a large class of man-ifold learning algorithms tha...
Locally linear embedding is an effective nonlinear dimensionality reduction method for exploring the...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
International audienceWe claim and present arguments to the effect that a large class of manifold le...
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...
Manifold learning is a widely used statistical tool which reduces the dimensionality of a data set w...
We present a framework for the reduction of dimensionality of a data set via manifold learning. Usin...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
Manifold learning has become a vital tool in data driven methods for interpretation of video, motion...
We present a simple variant of the k-d tree which automatically adapts to intrinsic low dimensional ...
Graph representation learning is an effective method to represent graph data in a low dimensional sp...
We present a new algorithm, Locally Smooth Manifold Learning (LSML), that learns a warping function ...
Computer aided diagnosis is often confronted with processing and analyzing high dimensional data. On...
We claim and present arguments to the effect that a large class of man-ifold learning algorithms tha...
Locally linear embedding is an effective nonlinear dimensionality reduction method for exploring the...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
International audienceWe claim and present arguments to the effect that a large class of manifold le...
Manifold learning has shown powerful information processing capability for high-dimensional data. In...
Many machine learning problems involve dealing with a large amount of high-dimensional data across d...
Abstract—This paper proposes a new approach to analyze high-dimensional data set using low-dimension...