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Greedy adaptive algorithms for sparse representations
Alexandru Onose
Research output
:
Book/Report
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Doctoral thesis
›
Collection of Articles
153
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Dive into the research topics of 'Greedy adaptive algorithms for sparse representations'. Together they form a unique fingerprint.
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Keyphrases
Estimation Theory
100%
Adaptive Algorithm
100%
Greedy
100%
Sparse Model
100%
Information Theoretic Criteria
100%
Coordinate Descent
100%
Sparse Solution
100%
Zero Element
100%
Sparse Representation
100%
Least Squares Criterion
100%
Computationally Efficient
50%
Signal Processing
50%
Optimization Problem
50%
Sliding Window
50%
Convergence Rate
50%
Global Optimum
50%
Local Solution
50%
Iterated Greedy Algorithm
50%
Least Squares
50%
Sparsity Level
50%
Slow Variation
50%
Sparse Methods
50%
Coefficient Value
50%
Matching Pursuit Algorithms
50%
Combinatorial Search
50%
QR Decomposition
50%
Structured Sparsity
50%
Model Sparsity
50%
Matching Pursuit
50%
Update Strategy
50%
Numerical Complexity
50%
Estimation Problem
50%
Numerical Computation
50%
Selection Strategy
50%
Bayesian Information Criterion
50%
Non-sparse
50%
Exhaustive Search
50%
Technological Progress
50%
Performance Guarantee
50%
Orthogonal Least Squares
50%
Configuration Parameters
50%
Number of Zeros
50%
Sparsity-based Algorithm
50%
Sparsity
50%
Sparsity Constraint
50%
Inherent Characteristics
50%
Support Selection
50%
Image Compressing
50%
Direction of Arrival
50%
Wireless Channel Estimation
50%
Computational Optimization
50%
Permutation-based
50%
Group Sparse
50%
Adaptive Method
50%
Batch Matching
50%
Sparse Structure
50%
Computer Science
Adaptive Algorithm
100%
Sparse Representation
100%
Sparsity
100%
Least Squares Method
66%
Matching Pursuit
33%
Sparse Solution
33%
Good Performance
16%
Limiting Factor
16%
Sliding Window
16%
Wireless Channel
16%
Selection Strategy
16%
Technological Advance
16%
Pursuit Algorithm
16%
Configuration Parameter
16%
direction-of-arrival
16%
Coefficient Value
16%
Numerical Computation
16%
Performance Guarantee
16%
Nonzero Element
16%
Convergence Speed
16%
Exhaustive Search
16%
Optimization Problem
16%
Channel Estimation
16%
Numerical Complexity
16%
Information Criterion
16%
Greedy Algorithm
16%
Engineering
Sparsity
100%
Least Square
66%
Matching Pursuit
33%
Good Performance
16%
Model Parameter
16%
Optimisation Problem
16%
Nodes
16%
Convergence Speed
16%
Global Optimum
16%
Limiting Factor
16%
Pursuit Algorithm
16%
Direction of Arrival
16%
Selection Strategy
16%
Exhaustive Search
16%
Channel Estimation
16%
Main Step
16%
Inherent Characteristic
16%
Technological Advance
16%
Adaptive Method
16%
Nonzero Element
16%
Numerical Computation
16%
Greedy Algorithm
16%