A ReLU neural network leads to a finite polyhedral decomposition of inpu...
We present a novel feature selection technique, Sparse Linear
Centroid-E...
We introduce a novel nonlinear model, Sparse Adaptive Bottleneck
Centroi...
We propose a new supervised dimensionality reduction technique called
Su...
Researchers typically investigate neural network representations by exam...
Previous work has shown that a neural network with the rectified linear ...
Finding prototypes (e.g., mean and median) for a dataset is central to a...
We develop a sparse optimization problem for the determination of the to...
A ReLU neural network determines/is a continuous piecewise linear map fr...
The shape and orientation of data clouds reflect variability in observat...
Visualizing high-dimensional data is an essential task in Data Science a...
Compressive sensing (CS) is a method of sampling which permits some clas...
Sampling is a fundamental aspect of any implementation of compressive
se...
Dimensionality-reduction methods are a fundamental tool in the analysis ...
A fundamental question in many data analysis settings is the problem of
...
Dimensionality-reduction techniques are a fundamental tool for extractin...
Endmember extraction plays a prominent role in a variety of data analysi...
The existence of characteristic structure, or shape, in complex data set...
We propose an approach for capturing the signal variability in hyperspec...