The problem of classifying graphs with respect to connectivity via partial observations of nodes is posed as a composite hypothesis testing problem with controlled sensing. An observation at a node is a subset of edges incident to the node on the complete graph drawn according to a probability model, which is a function of a fixed underlying graph. Connectivity is measured through average node degree and is classified with respect to a threshold. A simple approximation of the controlled sensing test is derived and simulated on Erdös-Rènyi graphs to characterize the error probabilities as a function of the expected stopping times. The test is also experimentally validated on a real-world example of the social structure of Long-Tailed Manakin...
<p>The detection of anomalous activity in graphs is a statistical problem that arises in many applic...
Many optimization, inference, and learning tasks can be accomplished efficiently by means of decentr...
Many optimization, inference, and learning tasks can be accomplished efficiently by means of decentr...
The problem of classifying graphs with respect to connectivity via partial observations of nodes is ...
The problem of classifying graphs with respect to connectivity via partial observations of nodes is ...
Graphs are used to model dependency structures, such as communication networks, social networks, and...
In this dissertation, we consider three statistical problems unified by an underlying graph structur...
In this paper, we study a hypothesis test to determine the underlying directed graph structure of no...
This thesis addresses statistical estimation and testing of signals over a graph when measurements a...
A distributed system or network can be modeled as a graph representing the "who knows who" relations...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
Abstract—Non-adaptive group testing involves grouping ar-bitrary subsets of n items into different p...
Abstract—Nonadaptive group testing involves grouping arbi-trary subsets of items into different poo...
Monitoring flows on a graph, using few selected nodes has application primarily in road networks, wh...
Learning the network structure of a large graph is computationally demanding, and dynamically monito...
<p>The detection of anomalous activity in graphs is a statistical problem that arises in many applic...
Many optimization, inference, and learning tasks can be accomplished efficiently by means of decentr...
Many optimization, inference, and learning tasks can be accomplished efficiently by means of decentr...
The problem of classifying graphs with respect to connectivity via partial observations of nodes is ...
The problem of classifying graphs with respect to connectivity via partial observations of nodes is ...
Graphs are used to model dependency structures, such as communication networks, social networks, and...
In this dissertation, we consider three statistical problems unified by an underlying graph structur...
In this paper, we study a hypothesis test to determine the underlying directed graph structure of no...
This thesis addresses statistical estimation and testing of signals over a graph when measurements a...
A distributed system or network can be modeled as a graph representing the "who knows who" relations...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
Abstract—Non-adaptive group testing involves grouping ar-bitrary subsets of n items into different p...
Abstract—Nonadaptive group testing involves grouping arbi-trary subsets of items into different poo...
Monitoring flows on a graph, using few selected nodes has application primarily in road networks, wh...
Learning the network structure of a large graph is computationally demanding, and dynamically monito...
<p>The detection of anomalous activity in graphs is a statistical problem that arises in many applic...
Many optimization, inference, and learning tasks can be accomplished efficiently by means of decentr...
Many optimization, inference, and learning tasks can be accomplished efficiently by means of decentr...