Deep learning has grown tremendously over recent years, yielding
state-o...
Dataset Distillation is the task of synthesizing small datasets from lar...
A coreset is a tiny weighted subset of an input set, that closely resemb...
Radial basis function neural networks (RBFNN) are well-known for
their c...
Water current prediction is essential for understanding ecosystems, and ...
Pruning is one of the predominant approaches for compressing deep neural...
(j,k)-projective clustering is the natural generalization of the family ...
Many path planning algorithms are based on sampling the state space. Whi...
In the monitoring problem, the input is an unbounded stream
P=p_1,p_2⋯ o...
A common technique for compressing a neural network is to compute the
k-...
Coreset is usually a small weighted subset of n input points in
R^d, tha...
PAC-learning usually aims to compute a small subset
(ε-sample/net) from ...
The input to the sets-k-means problem is an integer k≥ 1 and a
set P={P_...
We present an efficient coreset construction algorithm for large-scale
S...