article number 62International audienceThe statistical analysis of massive and complex data sets will require the development of algorithms that depend on distributed computing and collaborative inference. Inspired by this, we propose a collab-orative framework that aims to estimate the unknown mean θ of a random variable X. In the model we present, a certain number of calculation units, distributed across a communication network represented by a graph, participate in the estimation of θ by sequentially receiving independent data from X while exchanging messages via a stochastic matrix A defined over the graph. We give precise conditions on the matrix A under which the statistical precision of the individual units is comparable to that of a...
International audienceConsidering groups of variables, rather than variables individually, can be be...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
We consider the problem ofdistributed mean estimation (DME), in which n machines are each given a lo...
article number 62International audienceThe statistical analysis of massive and complex data sets wil...
The classical framework on distributed inference considers a set of nodes taking measurements and a ...
The classical framework on distributed inference considers a set of nodes taking measurements and a ...
Consider a network of nodes that are deployed to monitor a common phenomenon. In many cases, the net...
In this paper we focus on collaborative multi-agent systems, where agents are distributed over a reg...
Abstract—We consider estimation of network cardinality by distributed anonymous strategies relying o...
In distributed applications knowing the topological properties of the underlying communication netwo...
International audienceWe consider how a set of collaborating agents can distributedly infer some of ...
Abstract. Average-consensus algorithms allow to compute the average of some agents ’ data in a distr...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We consider the problem of estimating the arithmetic average of a finite collection of real vectors ...
Learning, prediction and identification has been a main topic of interest in science and engineering...
International audienceConsidering groups of variables, rather than variables individually, can be be...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
We consider the problem ofdistributed mean estimation (DME), in which n machines are each given a lo...
article number 62International audienceThe statistical analysis of massive and complex data sets wil...
The classical framework on distributed inference considers a set of nodes taking measurements and a ...
The classical framework on distributed inference considers a set of nodes taking measurements and a ...
Consider a network of nodes that are deployed to monitor a common phenomenon. In many cases, the net...
In this paper we focus on collaborative multi-agent systems, where agents are distributed over a reg...
Abstract—We consider estimation of network cardinality by distributed anonymous strategies relying o...
In distributed applications knowing the topological properties of the underlying communication netwo...
International audienceWe consider how a set of collaborating agents can distributedly infer some of ...
Abstract. Average-consensus algorithms allow to compute the average of some agents ’ data in a distr...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
We consider the problem of estimating the arithmetic average of a finite collection of real vectors ...
Learning, prediction and identification has been a main topic of interest in science and engineering...
International audienceConsidering groups of variables, rather than variables individually, can be be...
The size of modern datasets has spurred interest in distributed statistical estimation. We consider ...
We consider the problem ofdistributed mean estimation (DME), in which n machines are each given a lo...