Most current online distributed machine learning algorithms have been studied in a data-parallel architecture among agents in networks. We study online distributed machine learning from a different perspective, where the features about the same samples are observed by multiple agents that wish to collaborate but do not exchange the raw data with each other. We propose a distributed feature online gradient descent algorithm and prove that local solution converges to the global minimizer with a sublinear rate O2T. Our algorithm does not require exchange of the primal data or even the model parameters between agents. Firstly, we design an auxiliary variable, which implies the information of the global features, and estimate at each agent by dy...
International audienceWe consider multi-agent stochastic optimization problems over reproducing kern...
We consider distributed optimization under communication constraints for training deep learning mode...
This work presents and studies a distributed algorithm for solving optimization problems over networ...
This paper studies the problem of learning under both large datasets and large-dimensional feature s...
We develop a Distributed Event-Triggered Stochastic GRAdient Descent (DETSGRAD) algorithm for solvin...
In this paper we consider online distributed learning problems. Online distributed learning refers t...
International audienceWe consider decentralized online supervised learning where estimators are chos...
This paper deals with a network of computing agents aiming to solve an online optimization problem i...
In this paper, we consider learning dictionary models over a network of agents, where each agent is ...
Abstract—This paper considers the problems of distributed online prediction and optimization. Each n...
Distributed optimization is a powerful paradigm to solve various problems in machine learning over n...
The paper studies distributed Dictionary Learning (DL) problems where the learning task is distribut...
This work addresses decentralized online optimization in nonstationary environments. A network of ag...
Consider the consensus problem of minimizing f(x) = ∑n i=1 fi(x) where each fi is only known to one ...
Machine learning models can deal with data samples scattered among distributed agents, each of which...
International audienceWe consider multi-agent stochastic optimization problems over reproducing kern...
We consider distributed optimization under communication constraints for training deep learning mode...
This work presents and studies a distributed algorithm for solving optimization problems over networ...
This paper studies the problem of learning under both large datasets and large-dimensional feature s...
We develop a Distributed Event-Triggered Stochastic GRAdient Descent (DETSGRAD) algorithm for solvin...
In this paper we consider online distributed learning problems. Online distributed learning refers t...
International audienceWe consider decentralized online supervised learning where estimators are chos...
This paper deals with a network of computing agents aiming to solve an online optimization problem i...
In this paper, we consider learning dictionary models over a network of agents, where each agent is ...
Abstract—This paper considers the problems of distributed online prediction and optimization. Each n...
Distributed optimization is a powerful paradigm to solve various problems in machine learning over n...
The paper studies distributed Dictionary Learning (DL) problems where the learning task is distribut...
This work addresses decentralized online optimization in nonstationary environments. A network of ag...
Consider the consensus problem of minimizing f(x) = ∑n i=1 fi(x) where each fi is only known to one ...
Machine learning models can deal with data samples scattered among distributed agents, each of which...
International audienceWe consider multi-agent stochastic optimization problems over reproducing kern...
We consider distributed optimization under communication constraints for training deep learning mode...
This work presents and studies a distributed algorithm for solving optimization problems over networ...