Dimensionality reduction methods, also known as projections, are often used to explore multidimensional data in machine learning, data science, and information visualization. However, several such methods, such as the well-known t-distributed stochastic neighbor embedding and its variants, are computationally expensive for large datasets, suffer from stability problems, and cannot directly handle out-of-sample data. We propose a learning approach to construct any such projections. We train a deep neural network based on sample set drawn from a given data universe, and their corresponding two-dimensional projections, compute with any user-chosen technique. Next, we use the network to infer projections of any dataset from the same universe. O...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2016.Cataloged fro...
Multidimensional projections (MPs) are effective methods for visualizing high-dimensional datasets t...
Dimensionality reduction methods, also known as projections, are often used to explore multidimensio...
Dimensionality reduction methods, also known as projections, are often used to explore multidimensio...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
We present a method to visually assess the stability of deep learned projections. For this, we pertu...
Among the many dimensionality reduction techniques that have appeared in the statistical literature,...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
Embedding high-dimensional data onto a low-dimensional manifold is of both theoretical and practical...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2016.Cataloged fro...
Multidimensional projections (MPs) are effective methods for visualizing high-dimensional datasets t...
Dimensionality reduction methods, also known as projections, are often used to explore multidimensio...
Dimensionality reduction methods, also known as projections, are often used to explore multidimensio...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Visualization techniques and methods are often a key aid for scientists who aim to form, refine, or ...
We present a method to visually assess the stability of deep learned projections. For this, we pertu...
Among the many dimensionality reduction techniques that have appeared in the statistical literature,...
Dimensionality reduction (DR) methods aim to map high-dimensional datasets to 2D scatterplots for vi...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
Embedding high-dimensional data onto a low-dimensional manifold is of both theoretical and practical...
Dimensionality reduction (DR) is used to explore high-dimensional data in many applications. Deep le...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mathematics, 2016.Cataloged fro...
Multidimensional projections (MPs) are effective methods for visualizing high-dimensional datasets t...