Sparse Modeling

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A01=Genady Grabarnik
A01=Irina Rish
advanced sparse recovery techniques
Author_Genady Grabarnik
Author_Irina Rish
biomarker identification
Block Coordinate Descent
Category=UN
Category=UYQM
compressed sensing
Dictionary Learning
dictionary learning methods
En
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Exponential Family Distribution
Forward Stepwise Regression
Fused Lasso
Gaussian MRFs
Group Lasso
Johnson Lindenstrauss Lemma
L1 Norm Minimization
Laplace Priors
Lasso Approach
Lasso Problem
Lasso Solution
Markov Network
Multi-task Learning
neuroimaging analysis
OMP
optimisation algorithms
signal processing efficiency
Simultaneous Variable Selection
Sparse Coding
sparse Gaussian Markov random fields
sparse graphical models
Sparse Matrix Factorization
sparse matrix factorizations
Sparse models
Sparse PCA
Sparse Recovery
Sparse Signal
Sparse Signal Recovery
structured sparsity

Product details

  • ISBN 9781439828694
  • Weight: 800g
  • Dimensions: 156 x 234mm
  • Publication Date: 01 Dec 2014
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Sparse models are particularly useful in scientific applications, such as biomarker discovery in genetic or neuroimaging data, where the interpretability of a predictive model is essential. Sparsity can also dramatically improve the cost efficiency of signal processing.

Sparse Modeling: Theory, Algorithms, and Applications provides an introduction to the growing field of sparse modeling, including application examples, problem formulations that yield sparse solutions, algorithms for finding such solutions, and recent theoretical results on sparse recovery. The book gets you up to speed on the latest sparsity-related developments and will motivate you to continue learning about the field.

The authors first present motivating examples and a high-level survey of key recent developments in sparse modeling. The book then describes optimization problems involving commonly used sparsity-enforcing tools, presents essential theoretical results, and discusses several state-of-the-art algorithms for finding sparse solutions.

The authors go on to address a variety of sparse recovery problems that extend the basic formulation to more sophisticated forms of structured sparsity and to different loss functions. They also examine a particular class of sparse graphical models and cover dictionary learning and sparse matrix factorizations.

Irina Rish, Genady Grabarnik

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