The unprecedented explosion of real-life big data sets have sparked a lot of research interests in data mining in recent years. Many of these big data sets are generated in network environment and are characterized by a dauntingly large size and high dimensionality which pose great challenges for detecting useful knowledge and patterns, such as network traffic anomalies, from them. In this paper, we study the problem of anomaly detection in big network connection data sets and propose an outlier detection technique, called Adaptive Stream Projected Outlier deTector (A-SPOT), to detect anomalies from large data sets using a novel adaptive subspace analysis approach. A case study of A-SPOT is conducted in this paper by deploying it to the 199...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
In this paper, we study the problem of anomaly detection in high-dimensional network streams. We hav...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
Anomalies are unusual and significant changes in a network’s traffic levels, which can often involve...
Detecting and understanding anomalies in IP networks is an open and ill-defined problem. Toward thi...
Detecting and understanding anomalies in IP networks is an open and ill-defined problem. Toward this...
Anomalies are unusual and significant changes in a network's traffic levels, which can often involve...
Abstract. Network traffic anomalies detection and characterization has been a hot topic of research ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
A great deal of research attention has been paid to data mining on data streams in recent years. In ...
In this paper, we study the problem of anomaly detection in high-dimensional network streams. We hav...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
Anomalies are unusual and significant changes in a network’s traffic levels, which can often involve...
Detecting and understanding anomalies in IP networks is an open and ill-defined problem. Toward thi...
Detecting and understanding anomalies in IP networks is an open and ill-defined problem. Toward this...
Anomalies are unusual and significant changes in a network's traffic levels, which can often involve...
Abstract. Network traffic anomalies detection and characterization has been a hot topic of research ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...
International audienceThis paper aims at precisely detecting and identifying anomalous events in IP ...