We investigate an existing distributed algorithm for learning sparse signals or data over networks. The algorithm is iterative and exchanges intermediate estimates of a sparse signal over a network. This learning strategy using exchange of intermediate estimates over the network requires a limited communication overhead for information transmission. Our objective in this article is to show that the strategy is good for learning in spite of limited communication. In pursuit of this objective, we first provide a restricted isometry property (RIP)-based theoretical analysis on convergence of the iterative algorithm. Then, using simulations, we show that the algorithm provides competitive performance in learning sparse signals vis-a-vis an exis...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
Compressed sensing is an emerging field based on the revelation that a small collection of linear pr...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
Abstract—In this paper, we address the problem of distributed sparse recovery of signals acquired vi...
This article proposes diffusion LMS strategies for distributed estimation over adaptive networks tha...
We develop a communication-efficient distributed estimation for the 1-bit compressive sensing where ...
This letter proposes a sparse diffusion algorithm for 1-bit compressed sensing (CS) in wireless sens...
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
International audienceIn distributed optimization for large-scale learning, a major performance limi...
In this paper, a sparsity promoting adaptive algorithm for distributed learning in diffusion network...
We study distributed inference, learning and optimization in scenarios which involve networked entit...
Abstract The issue considered in the current study is the problem of adaptive distributed estimatio...
We consider the problem of learning classifiers for labeled data that has been distributed across se...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
Compressed sensing is an emerging field based on the revelation that a small collection of linear pr...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
Abstract—In this paper, we address the problem of distributed sparse recovery of signals acquired vi...
This article proposes diffusion LMS strategies for distributed estimation over adaptive networks tha...
We develop a communication-efficient distributed estimation for the 1-bit compressive sensing where ...
This letter proposes a sparse diffusion algorithm for 1-bit compressed sensing (CS) in wireless sens...
In distributed optimization and machine learning, multiple nodes coordinate to solve large problems....
International audienceIn distributed optimization for large-scale learning, a major performance limi...
In this paper, a sparsity promoting adaptive algorithm for distributed learning in diffusion network...
We study distributed inference, learning and optimization in scenarios which involve networked entit...
Abstract The issue considered in the current study is the problem of adaptive distributed estimatio...
We consider the problem of learning classifiers for labeled data that has been distributed across se...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
DoctorWe study diffusion strategies over adaptive networks for distributed estimation in which every...
Compressed sensing is an emerging field based on the revelation that a small collection of linear pr...
DoctorIn this thesis, we develop novel algorithms which deal with a distributed estimation problem. ...