International audiencePart I of this paper formulated a multitask optimization problem where agents in the network have individual objectives to meet, or individual parameter vectors to estimate, subject to a smoothness condition over the graph. A diffusion strategy was devised that responds to streaming data and employs stochastic approximations in place of actual gradient vectors, which are generally unavailable. The approach relied on minimizing a global cost consisting of the aggregate sum of individual costs regularized by a term that promotes smoothness. We examined the first-order, the second-order, and the fourth-order stability of the multitask learning algorithm. The results identified conditions on the step-size parameter, regula...
Part & x00A0;I of this paper considered optimization problems over networks where agents have indivi...
The problem of simultaneously learning several related tasks has received considerable attention in ...
International audienceOnline learning with streaming data in a distributed and collaborative manner ...
International audienceThis paper formulates a multitask optimization problem where agents in the net...
International audienceThis letter proposes a general regularization framework for inference over mul...
This letter proposes a general regularization framework for inference over multitask networks. The o...
This paper formulates a multitask optimization problem where agents in the network have individual o...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...
This dissertation deals with the development of effective information processing strategies for dist...
Abstract—Part I of this work examined the mean-square stability and convergence of the learning proc...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...
Adaptive networks are suitable for decentralized inference tasks, e.g., to monitor complex natural p...
The first part of this dissertation considers distributed learning problems over networked agents. T...
International audienceThe problem of learning simultaneously several related tasks has received cons...
Part & x00A0;I of this paper considered optimization problems over networks where agents have indivi...
The problem of simultaneously learning several related tasks has received considerable attention in ...
International audienceOnline learning with streaming data in a distributed and collaborative manner ...
International audienceThis paper formulates a multitask optimization problem where agents in the net...
International audienceThis letter proposes a general regularization framework for inference over mul...
This letter proposes a general regularization framework for inference over multitask networks. The o...
This paper formulates a multitask optimization problem where agents in the network have individual o...
Adaptive networks are suitable for decentralized inference tasks. Recent works have intensively stud...
This dissertation deals with the development of effective information processing strategies for dist...
Abstract—Part I of this work examined the mean-square stability and convergence of the learning proc...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...
Adaptive networks are suitable for decentralized inference tasks, e.g., to monitor complex natural p...
The first part of this dissertation considers distributed learning problems over networked agents. T...
International audienceThe problem of learning simultaneously several related tasks has received cons...
Part & x00A0;I of this paper considered optimization problems over networks where agents have indivi...
The problem of simultaneously learning several related tasks has received considerable attention in ...
International audienceOnline learning with streaming data in a distributed and collaborative manner ...