In this paper, we consider decentralized optimization problems where agents have individual cost functions to minimize subject to subspace constraints that require the minimizers across the network to lie in low-dimensional subspaces. This constrained formulation includes consensus or single-task optimization as special cases, and allows for more general task relatedness models such as multitask smoothness and coupled optimization. In order to cope with communication constraints, we propose and study an adaptive decentralized strategy where the agents employ differential randomized quantizers to compress their estimates before communicating with their neighbors. The analysis shows that, under some general conditions on the quantization nois...
Applications of decentralized multi-agent systems are ubiquitous in the present day, including auton...
We consider decentralized stochastic optimization with the objective function (e.g. data samples for...
Decentralized distributed learning is the key to enabling large-scale machine learning (training) on...
In this paper, we consider decentralized optimization problems where agents have individual cost fun...
In this paper, we consider decentralized optimization problems where agents have individual cost fun...
In this paper, we study unconstrained distributed optimization strongly convex problems, in which th...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
We study the consensus decentralized optimization problem where the objective function is the averag...
This work presents and studies a distributed algorithm for solving optimization problems over networ...
Decentralized learning offers privacy and communication efficiency when data are naturally distribut...
We consider a generic decentralized constrained optimization problem over static, directed communica...
ABSTRACTWe consider distributed optimization over several devices, each sending incremental model up...
This paper considers the problem of decentralized, personalized federated learning. For centralized ...
This dissertation studies the performance and linear convergence properties of primal-dual methods...
In this paper, we consider the unconstrained distributed optimization problem, in which the exchange...
Applications of decentralized multi-agent systems are ubiquitous in the present day, including auton...
We consider decentralized stochastic optimization with the objective function (e.g. data samples for...
Decentralized distributed learning is the key to enabling large-scale machine learning (training) on...
In this paper, we consider decentralized optimization problems where agents have individual cost fun...
In this paper, we consider decentralized optimization problems where agents have individual cost fun...
In this paper, we study unconstrained distributed optimization strongly convex problems, in which th...
Recently decentralized optimization attracts much attention in machine learning because it is more c...
We study the consensus decentralized optimization problem where the objective function is the averag...
This work presents and studies a distributed algorithm for solving optimization problems over networ...
Decentralized learning offers privacy and communication efficiency when data are naturally distribut...
We consider a generic decentralized constrained optimization problem over static, directed communica...
ABSTRACTWe consider distributed optimization over several devices, each sending incremental model up...
This paper considers the problem of decentralized, personalized federated learning. For centralized ...
This dissertation studies the performance and linear convergence properties of primal-dual methods...
In this paper, we consider the unconstrained distributed optimization problem, in which the exchange...
Applications of decentralized multi-agent systems are ubiquitous in the present day, including auton...
We consider decentralized stochastic optimization with the objective function (e.g. data samples for...
Decentralized distributed learning is the key to enabling large-scale machine learning (training) on...