<p>The detection of anomalous activity in graphs is a statistical problem that arises in many applications, such as network surveillance, disease outbreak detection, and activity monitoring in social networks. Beyond its wide applicability, graph structured anomaly detection serves as a case study in the difficulty of balancing computational complexity with statistical power. In this work, we develop from first principles the generalized likelihood ratio test for determining if there is a well connected region of activation over the vertices in the graph in Gaussian noise. Because this test is computationally infeasible, we provide a relaxation, called the Lovasz extended scan statistic (LESS) that uses submodularity ´ to approximate the in...
How can we detect fraudsters in large online review networks, or power grid failures using electrica...
We introduce a theory of scan statistics on graphs and apply the ideas to the problem of anomaly det...
<p>We consider the detection of clusters of activation over graphs under Gaussian noise. This proble...
The detection of anomalous activity in graphs is a statistical problem that arises in many applicati...
Abstract—The localization of anomalous activity in graphs is a statistical problem that arises in ma...
In this dissertation, we consider three statistical problems unified by an underlying graph structur...
Learning the network structure of a large graph is computationally demanding, and dynamically monito...
This thesis addresses statistical estimation and testing of signals over a graph when measurements a...
Abstract—When working with large-scale network data, the interconnected entities often have addition...
Non-parametric graph scan (NPGS) statistics are used to detect anomalous connected subgraphs on grap...
Abstract—In this paper, we review our recent work on detecting weak patterns that are sparse and loc...
Identifying anomalies in computer networks is a challenging and complex problem. Often, anomalies oc...
Scan statistics is one of the most popular approaches for anomaly detection in spatial and network d...
Our goal is to detect localized regions of excessive activity in a network, distinguishing networks ...
Anomaly detection is an area that has received much attention in recent years. It has a wide variety...
How can we detect fraudsters in large online review networks, or power grid failures using electrica...
We introduce a theory of scan statistics on graphs and apply the ideas to the problem of anomaly det...
<p>We consider the detection of clusters of activation over graphs under Gaussian noise. This proble...
The detection of anomalous activity in graphs is a statistical problem that arises in many applicati...
Abstract—The localization of anomalous activity in graphs is a statistical problem that arises in ma...
In this dissertation, we consider three statistical problems unified by an underlying graph structur...
Learning the network structure of a large graph is computationally demanding, and dynamically monito...
This thesis addresses statistical estimation and testing of signals over a graph when measurements a...
Abstract—When working with large-scale network data, the interconnected entities often have addition...
Non-parametric graph scan (NPGS) statistics are used to detect anomalous connected subgraphs on grap...
Abstract—In this paper, we review our recent work on detecting weak patterns that are sparse and loc...
Identifying anomalies in computer networks is a challenging and complex problem. Often, anomalies oc...
Scan statistics is one of the most popular approaches for anomaly detection in spatial and network d...
Our goal is to detect localized regions of excessive activity in a network, distinguishing networks ...
Anomaly detection is an area that has received much attention in recent years. It has a wide variety...
How can we detect fraudsters in large online review networks, or power grid failures using electrica...
We introduce a theory of scan statistics on graphs and apply the ideas to the problem of anomaly det...
<p>We consider the detection of clusters of activation over graphs under Gaussian noise. This proble...