International audienceThis paper addresses the distributed computation of exact, non-asymptotic confidence regions for the parameter estimation of a linear model from observations at different nodes of a network of sensors. If a central unit gathers all the data, the sign perturbed sums (SPS) method proposed by Csáji et al. can be used to define guaranteed confidence regions with prescribed confidence levels from a finite number of measurements. SPS requires only mild assumptions on the measurement noise. This work proposes distributed solutions, based on SPS and suited to a wide variety of sensor networks, for distributed in-node evaluation of non-asymptotic confidence regions as defined by SPS. More specifically, a Tagged and Aggregated S...
We deal with consensus-based online estimation and tracking of (non-) stationary signals using ad ho...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
© 2016 IEEE. We study a distributed node-specific parameter estimation problem where each node in a ...
International audienceThis paper addresses the distributed computation of exact, non-asymptotic conf...
This paper addresses the distributed computation of exact, nonasymptotic confidence regions for the ...
open5siGetting confidence regions for parameter estimates obtained from data collected by a wireless...
In this paper, the distributed computation of confidence regions for parameter estimation is conside...
This paper considers the distributed computation of non-asymptotic confidence regions for parameter ...
We consider a sensor network in which each sensor may take at every time iteration a noisy linear me...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...
We consider the problem of classifying among a set of M hypotheses via distributed noisy sensors. Se...
Abstract — In this paper we propose an algorithm for con-structing non-asymptotic confidence regions...
Estimating the unknown parameters of a statistical model based on the observations collected by a se...
Summary. In this paper, we address distributed hypothesis testing (DHT) in sensor networks and Bayes...
We deal with consensus-based online estimation and tracking of (non-) stationary signals using ad ho...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
© 2016 IEEE. We study a distributed node-specific parameter estimation problem where each node in a ...
International audienceThis paper addresses the distributed computation of exact, non-asymptotic conf...
This paper addresses the distributed computation of exact, nonasymptotic confidence regions for the ...
open5siGetting confidence regions for parameter estimates obtained from data collected by a wireless...
In this paper, the distributed computation of confidence regions for parameter estimation is conside...
This paper considers the distributed computation of non-asymptotic confidence regions for parameter ...
We consider a sensor network in which each sensor may take at every time iteration a noisy linear me...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...
In this paper, we consider the problem of simultaneously classifying sensor types and estimating hid...
We consider the problem of classifying among a set of M hypotheses via distributed noisy sensors. Se...
Abstract — In this paper we propose an algorithm for con-structing non-asymptotic confidence regions...
Estimating the unknown parameters of a statistical model based on the observations collected by a se...
Summary. In this paper, we address distributed hypothesis testing (DHT) in sensor networks and Bayes...
We deal with consensus-based online estimation and tracking of (non-) stationary signals using ad ho...
We address the problem of distributed estimation of a parameter from a set of noisy observations col...
© 2016 IEEE. We study a distributed node-specific parameter estimation problem where each node in a ...