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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 5160 of 823 papers

TitleStatusHype
Measuring Progress in Dictionary Learning for Language Model Interpretability with Board Game ModelsCode1
Online Multi-Source Domain Adaptation through Gaussian Mixtures and Dataset Dictionary Learning0
A Model for Combinatorial Dictionary Learning and Inference0
Subgraph Clustering and Atom Learning for Improved Image Classification0
GroupCDL: Interpretable Denoising and Compressed Sensing MRI via Learned Group-Sparsity and Circulant AttentionCode1
A Resolution Independent Neural Operator0
Compressive Electron Backscatter Diffraction Imaging0
Dataset Dictionary Learning in a Wasserstein Space for Federated Domain Adaptation0
Variational Learning ISTA0
Unmixing Noise from Hawkes Process to Model Learned Physiological Events0
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