Sparse dictionary learning
Sparse dictionary learning is a method in machine learning and signal processing for finding a sparse representation of data. This technique is particularly useful in applications such as image processing, audio processing, and data compression. The goal is to represent data as a linear combination of a few elements from a dictionary, which is a set of basis vectors.
Overview
Sparse dictionary learning aims to find a dictionary \( D \) and a sparse matrix \( X \) such that the product \( DX \) approximates the original data matrix \( Y \). The dictionary \( D \) is typically overcomplete, meaning it has more columns than rows, allowing for a more flexible representation of the data.
Mathematical Formulation
Given a data matrix \( Y \in \mathbb{R}^{m \times n} \), sparse dictionary learning seeks to solve the optimization problem:
\[ \min_{D, X} \| Y - DX \|_F^2 + \lambda \| X \|_0 \]
where:
- \( \| \cdot \|_F \) denotes the Frobenius norm,
- \( \| \cdot \|_0 \) denotes the \( \ell_0 \) norm, which counts the number of non-zero elements,
- \( \lambda \) is a regularization parameter that controls the sparsity of \( X \).
Algorithms
Several algorithms have been developed to solve the sparse dictionary learning problem, including:
These algorithms iteratively update the dictionary \( D \) and the sparse representation \( X \) to minimize the objective function.
Applications
Sparse dictionary learning has a wide range of applications, including:
Related Concepts
- Sparse coding
- Principal component analysis
- Independent component analysis
- Non-negative matrix factorization
See Also
References
External Links
dictionary learning| |_}} {{#replace:Sparse dictionary learning| |_}}
.
This article is a Machine learning stub. You can help WikiMD by expanding it!
```
This template is designed for use in marking articles related to machine learning as stubs, which are articles that are too short to provide more than rudimentary information about a subject. When this template is placed on a page, it automatically adds the page to the "Machine learning stubs" category, making it easier for contributors to find and expand short articles in this subject area.
Transform your life with W8MD's budget GLP-1 injections from $125.
W8MD offers a medical weight loss program to lose weight in Philadelphia. Our physician-supervised medical weight loss provides:
- Most insurances accepted or discounted self-pay rates. We will obtain insurance prior authorizations if needed.
- Generic GLP1 weight loss injections from $125 for the starting dose.
- Also offer prescription weight loss medications including Phentermine, Qsymia, Diethylpropion, Contrave etc.
NYC weight loss doctor appointments
Start your NYC weight loss journey today at our NYC medical weight loss and Philadelphia medical weight loss clinics.
- Call 718-946-5500 to lose weight in NYC or for medical weight loss in Philadelphia 215-676-2334.
- Tags:NYC medical weight loss, Philadelphia lose weight Zepbound NYC, Budget GLP1 weight loss injections, Wegovy Philadelphia, Wegovy NYC, Philadelphia medical weight loss, Brookly weight loss and Wegovy NYC
WikiMD's Wellness Encyclopedia |
Let Food Be Thy Medicine Medicine Thy Food - Hippocrates |
Medical Disclaimer: WikiMD is not a substitute for professional medical advice. The information on WikiMD is provided as an information resource only, may be incorrect, outdated or misleading, and is not to be used or relied on for any diagnostic or treatment purposes. Please consult your health care provider before making any healthcare decisions or for guidance about a specific medical condition. WikiMD expressly disclaims responsibility, and shall have no liability, for any damages, loss, injury, or liability whatsoever suffered as a result of your reliance on the information contained in this site. By visiting this site you agree to the foregoing terms and conditions, which may from time to time be changed or supplemented by WikiMD. If you do not agree to the foregoing terms and conditions, you should not enter or use this site. See full disclaimer.
Credits:Most images are courtesy of Wikimedia commons, and templates, categories Wikipedia, licensed under CC BY SA or similar.
Contributors: Prab R. Tumpati, MD