International audienceIn this work, we are interested in adaptive and distributed estimation of graph filters from streaming data. We formulate this problem as a consensus estimation problem over graphs, which can be addressed with diffusion LMS strategies. Most popular graph-shift operators such as those based on the graph Laplacian matrix, or the adjacency matrix, are not energy preserving. This may result in an ill-conditioned estimation problem, and reduce the convergence speed of the distributed algorithms. To address this issue and improve the transient performance, we introduce a preconditioned graph diffusion LMS algorithm. We also propose a computationally efficient version of this algorithm by approximating the Hessian matrix with...
This work introduces kernel adaptive graph filters that operate in the reproducing kernel Hilbert sp...
International audienceMost works on graph signal processing assume static graph signals, which is a ...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...
In this article, we are interested in adaptive and distributed estimation of graph filters from stre...
International audienceGraph filters, defined as polynomial functions of a graph-shift operator (GSO)...
Graph filters, defined as polynomial functions of a graph-shift operator (GSO), play a key role in s...
The massive deployment of distributed acquisition and signal processing systems, as well as the ubiq...
International audienceIn this work, we consider the problem of estimating the coefficients of linear...
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...
In sensor networks, adaptive algorithms such as diffusion adaptation LMS and RLS are commonly used t...
Most works on graph signal processing assume static graph signals, which is a limitation even in com...
peer reviewedThis work introduces kernel adaptive graph filters that operate in the reproducing kern...
This work introduces kernel adaptive graph filters that operate in the reproducing kernel Hilbert sp...
This work introduces kernel adaptive graph filters that operate in the reproducing kernel Hilbert sp...
International audienceMost works on graph signal processing assume static graph signals, which is a ...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...
In this article, we are interested in adaptive and distributed estimation of graph filters from stre...
International audienceGraph filters, defined as polynomial functions of a graph-shift operator (GSO)...
Graph filters, defined as polynomial functions of a graph-shift operator (GSO), play a key role in s...
The massive deployment of distributed acquisition and signal processing systems, as well as the ubiq...
International audienceIn this work, we consider the problem of estimating the coefficients of linear...
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...
In sensor networks, adaptive algorithms such as diffusion adaptation LMS and RLS are commonly used t...
Most works on graph signal processing assume static graph signals, which is a limitation even in com...
peer reviewedThis work introduces kernel adaptive graph filters that operate in the reproducing kern...
This work introduces kernel adaptive graph filters that operate in the reproducing kernel Hilbert sp...
This work introduces kernel adaptive graph filters that operate in the reproducing kernel Hilbert sp...
International audienceMost works on graph signal processing assume static graph signals, which is a ...
Recent research works on distributed adaptive networks have inten-sively studied the case where the ...