We consider the problem of aggregating data in a dynamic graph, that is, aggregating the data that originates from all nodes in the graph to a specific node, the sink. We are interested in giving lower bounds for this problem, under different kinds of adversaries. In our model, nodes are endowed with unlimited memory and unlimited computational power. Yet, we assume that communications between nodes are carried out with pairwise interactions, where nodes can exchange control information before deciding whether they transmit their data or not, given that each node is allowed to transmit its data at most once. When a node receives a data from a neighbor, the node may aggregate it with its own data. We consider three possible adversaries: the ...
Inspired by the increasing interest in self-organizing social opportunistic networks, we investigate...
Inspired by the increasing interest in self-organizing social opportunistic networks, we investigate...
Learning, prediction and identification has been a main topic of interest in science and engineering...
International audienceWe consider the problem of aggregating data in a dynamic graph, that is, aggre...
International audienceWe consider the well-studied rumor spreading model in which nodes contact a ra...
We consider the problem of dynamic aggregation of inputs over a large graph. A dynamic aggregation a...
Abstract. The history of distributed computing is strongly tied to the assumption of a static networ...
In this report we investigate distributed computation in dynamic networks in which the network topol...
Abstract — We consider distributed algorithms for data ag-gregation in sensor networks. The algorith...
Motivated by the need for robust and fast distributed computation in highly dynamic Peer-to-Peer (P2...
We consider distributed algorithms for data aggregation and function computation in sensor networks....
textModern day networks, both physical and virtual, are designed to support increasingly sophisticat...
Consider a distributed task where the communication network is fixed but the local inputs given to t...
Inspired by the increasing interest in self-organizing social opportunistic networks, we investigate...
Inspired by the increasing interest in self-organizing social opportunistic networks, we investigate...
Learning, prediction and identification has been a main topic of interest in science and engineering...
International audienceWe consider the problem of aggregating data in a dynamic graph, that is, aggre...
International audienceWe consider the well-studied rumor spreading model in which nodes contact a ra...
We consider the problem of dynamic aggregation of inputs over a large graph. A dynamic aggregation a...
Abstract. The history of distributed computing is strongly tied to the assumption of a static networ...
In this report we investigate distributed computation in dynamic networks in which the network topol...
Abstract — We consider distributed algorithms for data ag-gregation in sensor networks. The algorith...
Motivated by the need for robust and fast distributed computation in highly dynamic Peer-to-Peer (P2...
We consider distributed algorithms for data aggregation and function computation in sensor networks....
textModern day networks, both physical and virtual, are designed to support increasingly sophisticat...
Consider a distributed task where the communication network is fixed but the local inputs given to t...
Inspired by the increasing interest in self-organizing social opportunistic networks, we investigate...
Inspired by the increasing interest in self-organizing social opportunistic networks, we investigate...
Learning, prediction and identification has been a main topic of interest in science and engineering...