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Dictionary Learning

Dictionary Learning is an important problem in multiple areas, ranging from computational neuroscience, machine learning, to computer vision and image processing. The general goal is to find a good basis for given data. More formally, in the Dictionary Learning problem, also known as sparse coding, we are given samples of a random vector $y\in\mathbb{R}^n$, of the form $y=Ax$ where $A$ is some unknown matrix in $\mathbb{R}^{n×m}$, called dictionary, and $x$ is sampled from an unknown distribution over sparse vectors. The goal is to approximately recover the dictionary $A$.

Source: Polynomial-time tensor decompositions with sum-of-squares

Papers

Showing 491500 of 823 papers

TitleStatusHype
Removing Rain From a Single Image via Discriminative Sparse Coding0
Representation Learning and Recovery in the ReLU Model0
Reprogramming Language Models for Molecular Representation Learning0
Reprogramming Pretrained Language Models for Protein Sequence Representation Learning0
Revisit Dictionary Learning for Video Compressive Sensing under the Plug-and-Play Framework0
Riemannian Coding and Dictionary Learning: Kernels to the Rescue0
Riemannian Dictionary Learning and Sparse Coding for Positive Definite Matrices0
Riemannian joint dimensionality reduction and dictionary learning on symmetric positive definite manifold0
Riemannian stochastic optimization methods avoid strict saddle points0
Robust Event Detection based on Spatio-Temporal Latent Action Unit using Skeletal Information0
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