Deep learning has had tremendous success at learning low-dimensional representations of high-dimensional data. This success would be impossible if there was no hidden low-dimensional structure in data of interest; this existence is posited by the manifold hypothesis, which states that the data lies on an unknown manifold of low intrinsic dimension. In this paper, we argue that this hypothesis does not properly capture the low-dimensional structure typically present in image data. Assuming that data lies on a single manifold implies intrinsic dimension is identical across the entire data space, and does not allow for subregions of this space to have a different number of factors of variation. To address this deficiency, we put forth the unio...
The emergence of low-cost sensing architectures for diverse modalities has made it possible to deplo...
The lack of crisp mathematical models that capture the structure of real-world data sets is a major ...
Manifold learning algorithms are successfully used in machine learning and statistical pattern recog...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
Across scientific and engineering disciplines, the algorithmic pipeline forprocessing and understand...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
We show that deep ReLU neural network classifiers can see a low-dimensional Riemannian manifold stru...
We show that deep ReLU neural network classifiers can see a low-dimensional Riemannian manifold stru...
The Deep Neural Networks (DNN) have become the main contributor in the field of machine learning (ML...
Deep neural networks progressively transform their inputs across multiple processing layers. What ar...
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...
The discovering of low-dimensional manifolds in high-dimensional data is one of the main goals in ma...
The discovering of low-dimensional manifolds in high-dimensional data is one of the main goals in ma...
Likelihood-based, or explicit, deep generative models use neural networks to construct flexible high...
The emergence of low-cost sensing architectures for diverse modalities has made it possible to deplo...
The lack of crisp mathematical models that capture the structure of real-world data sets is a major ...
Manifold learning algorithms are successfully used in machine learning and statistical pattern recog...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
Across scientific and engineering disciplines, the algorithmic pipeline forprocessing and understand...
We are increasingly confronted with very high dimensional data from speech,images, genomes, and othe...
We show that deep ReLU neural network classifiers can see a low-dimensional Riemannian manifold stru...
We show that deep ReLU neural network classifiers can see a low-dimensional Riemannian manifold stru...
The Deep Neural Networks (DNN) have become the main contributor in the field of machine learning (ML...
Deep neural networks progressively transform their inputs across multiple processing layers. What ar...
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...
The discovering of low-dimensional manifolds in high-dimensional data is one of the main goals in ma...
The discovering of low-dimensional manifolds in high-dimensional data is one of the main goals in ma...
Likelihood-based, or explicit, deep generative models use neural networks to construct flexible high...
The emergence of low-cost sensing architectures for diverse modalities has made it possible to deplo...
The lack of crisp mathematical models that capture the structure of real-world data sets is a major ...
Manifold learning algorithms are successfully used in machine learning and statistical pattern recog...