The minimax optimization over Riemannian manifolds (possibly nonconvex constraints) has been actively applied to solve many problems, such as robust dimensionality reduction and deep neural networks with orthogonal weights (Stiefel manifold). Although many optimization algorithms for minimax problems have been developed in the Euclidean setting, it is difficult to convert them into Riemannian cases, and algorithms for nonconvex minimax problems with nonconvex constraints are even rare. On the other hand, to address the big data challenges, decentralized (serverless) training techniques have recently been emerging since they can reduce communications overhead and avoid the bottleneck problem on the server node. Nonetheless, the algorithm for...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
Decentralized optimization algorithms have attracted intensive interests recently, as it has a balan...
In this two-part paper, we propose a general algorithmic framework for the minimization of a nonconv...
Nonconvex min-max optimization receives increasing attention in modern machine learning, especially ...
Machine learning (ML) has always been a wonderful tool on helping people solving real world problems...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
Large scale convex-concave minimax problems arise in numerous applications, including game theory, r...
In this paper, we focus on the decentralized optimization problem over the Stiefel manifold, which i...
We consider decentralized gradient-free optimization of minimizing Lipschitz continuous functions th...
Abstract We study stochastic projection-free methods for constrained optimization of...
The problem of minimax optimization arises in a wide range of applications. When the objective funct...
In this paper, we study min-max optimization problems on Riemannian manifolds. We introduce a Rieman...
We study the consensus decentralized optimization problem where the objective function is the averag...
International audienceWe consider the problem of minimizing a non-convex function over a smooth mani...
International audienceDecentralized optimization algorithms have received much attention due to the ...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
Decentralized optimization algorithms have attracted intensive interests recently, as it has a balan...
In this two-part paper, we propose a general algorithmic framework for the minimization of a nonconv...
Nonconvex min-max optimization receives increasing attention in modern machine learning, especially ...
Machine learning (ML) has always been a wonderful tool on helping people solving real world problems...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
Large scale convex-concave minimax problems arise in numerous applications, including game theory, r...
In this paper, we focus on the decentralized optimization problem over the Stiefel manifold, which i...
We consider decentralized gradient-free optimization of minimizing Lipschitz continuous functions th...
Abstract We study stochastic projection-free methods for constrained optimization of...
The problem of minimax optimization arises in a wide range of applications. When the objective funct...
In this paper, we study min-max optimization problems on Riemannian manifolds. We introduce a Rieman...
We study the consensus decentralized optimization problem where the objective function is the averag...
International audienceWe consider the problem of minimizing a non-convex function over a smooth mani...
International audienceDecentralized optimization algorithms have received much attention due to the ...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
Decentralized optimization algorithms have attracted intensive interests recently, as it has a balan...
In this two-part paper, we propose a general algorithmic framework for the minimization of a nonconv...