The aggregation and estimation of values over networks is fundamental for distributed applications, such as wireless sensor networks. Estimating the average, minimal and maximal values has already been extensively studied in the literature. In this paper, we focus on estimating empirical distributions of values in a network with anonymous agents. In particular, we compare two different estimation strategies in terms of their convergence speed, accuracy and communication costs. The first strategy is deterministic and based on the average consensus protocol, while the second strategy is probabilistic and based on the max consensus protocol.QC 20140917</p
Distributed aggregation allows the derivation of a given global aggre-gate property from many indivi...
In distributed consensus and averaging algorithms, processors exchange and update certain values ("e...
Abstract — Average consensus estimators enable robots in a communication network to calculate the me...
The aggregation and estimation of values over networks is fundamental for distributed applications, ...
Abstract — The aggregation and estimation of values over networks is fundamental for distributed app...
Abstract—We consider estimation of network cardinality by distributed anonymous strategies relying o...
Abstract — We consider the problem of estimating the size of dynamic anonymous networks, motivated b...
Abstract — We consider the problem of estimating the size of dynamic anonymous networks, motivated b...
Abstract: We consider how a set of collaborating agents can distributedly infer some of the properti...
In this paper we propose two distributed control protocols for discrete-time multi-agent systems (MA...
In distributed applications knowing the topological properties of the underlying communication netwo...
Abstract — The distributed estimation of the number of active sensors in a network can be important ...
Distributed algorithms for an aggregate function estimation are an important complement of many real...
An energy-efficient estimation of an aggregate function can significantly optimize a global event de...
In a spatially distributed network of sensors or mobile agents it is often required to compute the a...
Distributed aggregation allows the derivation of a given global aggre-gate property from many indivi...
In distributed consensus and averaging algorithms, processors exchange and update certain values ("e...
Abstract — Average consensus estimators enable robots in a communication network to calculate the me...
The aggregation and estimation of values over networks is fundamental for distributed applications, ...
Abstract — The aggregation and estimation of values over networks is fundamental for distributed app...
Abstract—We consider estimation of network cardinality by distributed anonymous strategies relying o...
Abstract — We consider the problem of estimating the size of dynamic anonymous networks, motivated b...
Abstract — We consider the problem of estimating the size of dynamic anonymous networks, motivated b...
Abstract: We consider how a set of collaborating agents can distributedly infer some of the properti...
In this paper we propose two distributed control protocols for discrete-time multi-agent systems (MA...
In distributed applications knowing the topological properties of the underlying communication netwo...
Abstract — The distributed estimation of the number of active sensors in a network can be important ...
Distributed algorithms for an aggregate function estimation are an important complement of many real...
An energy-efficient estimation of an aggregate function can significantly optimize a global event de...
In a spatially distributed network of sensors or mobile agents it is often required to compute the a...
Distributed aggregation allows the derivation of a given global aggre-gate property from many indivi...
In distributed consensus and averaging algorithms, processors exchange and update certain values ("e...
Abstract — Average consensus estimators enable robots in a communication network to calculate the me...