We consider the problem of tracking the topology of a large-scale dynamic network with limited monitoring resources. By modeling the dynamics of links as independent ON-OFF Markov chains, we formulate the problem as that of maximizing the overall accuracy of tracking link states when only a limited number of network elements can be monitored at each time step. We consider two forms of sampling policies: link sampling, where we directly observe the selected links, and node sampling, where we observe states of the links adjacent to the selected nodes. We reduce the link sampling problem to a Restless Multi-armed Bandit (RMB) and prove its indexability under certain conditions. By applying the Whittle's index policy, we develop an efficient li...
Recently, the area of decision and control has been interested in studying the connectivity of large...
Reconstructing weighted networks from partial information is necessary in many important circumstanc...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...
We consider the problem of tracking the topology of a large-scale dynamic network with limited monit...
© 2015 Elsevier B.V. All rights reserved. Traditional graph sampling methods reduce the size of a la...
Abstract We propose a dynamic network sampling scheme to optimize block recovery for stochastic bloc...
AbstractMapping the Internet generally consists in sampling the network from a limited set of source...
We face a growing ecosystem of applications that produce and consume data at unprecedented rates and...
Abstract. Determining the graph-theoretic properties of large real-world networks like social, compu...
Modern information networks, such as social networks, are often characterized with large sizes and d...
Abstract—Since dynamic wireless networks evolve over time, optimal routing computations need to be p...
Mapping the Internet generally consists in sampling the network from a limited set of sources by usi...
In this section, we examine how the connectivity struc-ture of the graph affects the efficiency of t...
Temporal networks have been increasingly used to model a diversity of systems that evolve in time; f...
Determining the graph-theoretic properties of large real-world networks like social, computer, and b...
Recently, the area of decision and control has been interested in studying the connectivity of large...
Reconstructing weighted networks from partial information is necessary in many important circumstanc...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...
We consider the problem of tracking the topology of a large-scale dynamic network with limited monit...
© 2015 Elsevier B.V. All rights reserved. Traditional graph sampling methods reduce the size of a la...
Abstract We propose a dynamic network sampling scheme to optimize block recovery for stochastic bloc...
AbstractMapping the Internet generally consists in sampling the network from a limited set of source...
We face a growing ecosystem of applications that produce and consume data at unprecedented rates and...
Abstract. Determining the graph-theoretic properties of large real-world networks like social, compu...
Modern information networks, such as social networks, are often characterized with large sizes and d...
Abstract—Since dynamic wireless networks evolve over time, optimal routing computations need to be p...
Mapping the Internet generally consists in sampling the network from a limited set of sources by usi...
In this section, we examine how the connectivity struc-ture of the graph affects the efficiency of t...
Temporal networks have been increasingly used to model a diversity of systems that evolve in time; f...
Determining the graph-theoretic properties of large real-world networks like social, computer, and b...
Recently, the area of decision and control has been interested in studying the connectivity of large...
Reconstructing weighted networks from partial information is necessary in many important circumstanc...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...