Decentralized optimization algorithms have attracted intensive interests recently, as it has a balanced communication pattern, especially when solving large-scale machine learning problems. Stochastic Path Integrated Differential Estimator Stochastic First-Order method (SPIDER-SFO) nearly achieves the algorithmic lower bound in certain regimes for nonconvex problems. However, whether we can find a decentralized algorithm which achieves a similar convergence rate to SPIDER-SFO is still unclear. To tackle this problem, we propose a decentralized variant of SPIDER-SFO, called decentralized SPIDER-SFO (D-SPIDER-SFO). We show that D-SPIDER-SFO achieves a similar gradient computation cost—that is, O(ε−3) for finding an ϵ-approximate first-order s...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
International audienceThis article addresses a distributed optimization problem in a communication n...
This dissertation considers distributed algorithms for centralized and decentralized networks that s...
We study the consensus decentralized optimization problem where the objective function is the averag...
International audienceWe propose distributed algorithms for high-dimensional sparse optimization. In...
In this paper, we introduce a fast row-stochastic decentralized algorithm, referred to as FRSD, to s...
Rapid advances in data collection and processing capabilities have allowed for the use of increasing...
Decentralized stochastic optimization methods have gained a lot of attention recently, mainly becaus...
Decentralized stochastic gradient descent methods have attracted increasing interest in recent years...
International audienceDecentralized optimization algorithms have received much attention due to the ...
Consider a network of N decentralized computing agents collaboratively solving a nonconvex stochasti...
We consider decentralized gradient-free optimization of minimizing Lipschitz continuous functions th...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
Distributed optimization has a rich history. It has demonstrated its effectiveness in many machine l...
In this letter, we first propose a \underline{Z}eroth-\underline{O}rder c\underline{O}ordinate \unde...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
International audienceThis article addresses a distributed optimization problem in a communication n...
This dissertation considers distributed algorithms for centralized and decentralized networks that s...
We study the consensus decentralized optimization problem where the objective function is the averag...
International audienceWe propose distributed algorithms for high-dimensional sparse optimization. In...
In this paper, we introduce a fast row-stochastic decentralized algorithm, referred to as FRSD, to s...
Rapid advances in data collection and processing capabilities have allowed for the use of increasing...
Decentralized stochastic optimization methods have gained a lot of attention recently, mainly becaus...
Decentralized stochastic gradient descent methods have attracted increasing interest in recent years...
International audienceDecentralized optimization algorithms have received much attention due to the ...
Consider a network of N decentralized computing agents collaboratively solving a nonconvex stochasti...
We consider decentralized gradient-free optimization of minimizing Lipschitz continuous functions th...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
Distributed optimization has a rich history. It has demonstrated its effectiveness in many machine l...
In this letter, we first propose a \underline{Z}eroth-\underline{O}rder c\underline{O}ordinate \unde...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
International audienceThis article addresses a distributed optimization problem in a communication n...
This dissertation considers distributed algorithms for centralized and decentralized networks that s...