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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 711720 of 823 papers

TitleStatusHype
On the Reconstruction Risk of Convolutional Sparse Dictionary LearningCode0
Reduced Kernel Dictionary LearningCode0
Multiscale Sparsifying Transform Learning for Image DenoisingCode0
Towards improving discriminative reconstruction via simultaneous dense and sparse codingCode0
Subtle Data Crimes: Naively training machine learning algorithms could lead to overly-optimistic resultsCode0
Deriving Autism Spectrum Disorder Functional Networks from RS-FMRI Data using Group ICA and Dictionary LearningCode0
Multi-Source Domain Adaptation through Dataset Dictionary Learning in Wasserstein SpaceCode0
Fusing Dictionary Learning and Support Vector Machines for Unsupervised Anomaly DetectionCode0
Convolutional Dictionary Learning: Acceleration and ConvergenceCode0
Understanding approximate and unrolled dictionary learning for pattern recoveryCode0
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