Sparsity has played an important role in numerous signal processing systems. By leveraging sparse representations of signals, many batch estimation algorithms and methods that are efficient, robust, and effective for practical engineering problems have been developed. However, gradient descent-based approaches that are less computationally expensive have become essential to the development of modern machine learning systems, especially the deep neural networks (DNNs). This dissertation examines how we can incorporate sparsity principles into gradient-based learning algorithms, in both signal processing and machine learning applications, for improved estimation and optimization performance.On the signal processing side, we study how to take ...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
The rapid development of modern information technology has significantly facilitated the generation,...
The use of sparsity has emerged in the last fifteen years as an important tool for solving many prob...
In this paper, a novel way of deriving proportionate adaptive filters is proposed based on diversity...
The growing energy and performance costs of deep learning have driven the community to reduce the si...
Sparse impulse responses are encountered in many applica-tions (network and acoustic echo cancellati...
We investigate filter level sparsity that emerges in convolutional neural networks (CNNs) which empl...
Incorporating machine learning techniques into optimization problems and solvers attracts increasing...
This paper introduces a class of normalized natural gradient algorithms (NNG) for adaptive filtering...
This paper develops an algorithm for finding sparse signals from limited observations of a linear sy...
The training of sparse neural networks is becoming an increasingly important tool for reducing the ...
Distributed training of massive machine learning models, in particular deep neural networks, via Sto...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
A vector or matrix is said to be sparse if the number of non-zero elements is significantly smaller ...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
The rapid development of modern information technology has significantly facilitated the generation,...
The use of sparsity has emerged in the last fifteen years as an important tool for solving many prob...
In this paper, a novel way of deriving proportionate adaptive filters is proposed based on diversity...
The growing energy and performance costs of deep learning have driven the community to reduce the si...
Sparse impulse responses are encountered in many applica-tions (network and acoustic echo cancellati...
We investigate filter level sparsity that emerges in convolutional neural networks (CNNs) which empl...
Incorporating machine learning techniques into optimization problems and solvers attracts increasing...
This paper introduces a class of normalized natural gradient algorithms (NNG) for adaptive filtering...
This paper develops an algorithm for finding sparse signals from limited observations of a linear sy...
The training of sparse neural networks is becoming an increasingly important tool for reducing the ...
Distributed training of massive machine learning models, in particular deep neural networks, via Sto...
It is now well understood that (1) it is possible to reconstruct sparse signals exactly from what ap...
A vector or matrix is said to be sparse if the number of non-zero elements is significantly smaller ...
Recently, sparse adaptive learning algorithms have been developed to exploit system sparsity as well...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
The rapid development of modern information technology has significantly facilitated the generation,...
The use of sparsity has emerged in the last fifteen years as an important tool for solving many prob...