Despite a large body of literature and methods devoted to the analysis of network traffic, the automatic detection and classification of network traffic anomalies still represents a major issue for network operators. The problem becomes even more challenging for cellular ISPs, both due to the ever growing number of connected devices and to the constant deployment of new applications and services prone to performance issues. In this paper we tackle this problem using Machine Learning (ML) approaches: in particular, we devise a system based on Neural Networks to unveil the relations between several monitored traffic features and network anomalies impacting a large number of customers in an operational cellular network. By training a model bas...
Presented herein are innovative techniques for analyzing network traffic and identifying anomalous p...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
Detecting anomalous traffic with low false alarm rates is of primary interest in IP networks managem...
Despite a large body of literature and methods devoted to the analysis of network traffic, the autom...
This paper proposes an anomaly detection framework that utilizes key performance indicators (KPIs) a...
Modern cellular networks are complex systems offering a wide range of services and present challenge...
Among the smart capabilities promised by the next generation cellular networks (5G and beyond), it i...
The data generated through telecommunication networks has grown exponentially in the last few years,...
In this paper, we design an Anomaly Detection (AD) framework for mobile data traffic, capable of ide...
Abstract—Detecting anomalies in computer networks is a classic, long-term research problem. While al...
Escalating cell outages and congestion-treated as anomalies-cost a substantial revenue loss to the c...
Recent studies have shown that a number of network attacks that were used to target mainframes and p...
The ever-increasing number of mobile devices is heavily mod-ifying the traffic observed in cellular ...
The massive amount of data available in operational mobile networks offers an invaluable opportunity...
In recent years, the volume and the complexity of data in Building Automation System networks have i...
Presented herein are innovative techniques for analyzing network traffic and identifying anomalous p...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
Detecting anomalous traffic with low false alarm rates is of primary interest in IP networks managem...
Despite a large body of literature and methods devoted to the analysis of network traffic, the autom...
This paper proposes an anomaly detection framework that utilizes key performance indicators (KPIs) a...
Modern cellular networks are complex systems offering a wide range of services and present challenge...
Among the smart capabilities promised by the next generation cellular networks (5G and beyond), it i...
The data generated through telecommunication networks has grown exponentially in the last few years,...
In this paper, we design an Anomaly Detection (AD) framework for mobile data traffic, capable of ide...
Abstract—Detecting anomalies in computer networks is a classic, long-term research problem. While al...
Escalating cell outages and congestion-treated as anomalies-cost a substantial revenue loss to the c...
Recent studies have shown that a number of network attacks that were used to target mainframes and p...
The ever-increasing number of mobile devices is heavily mod-ifying the traffic observed in cellular ...
The massive amount of data available in operational mobile networks offers an invaluable opportunity...
In recent years, the volume and the complexity of data in Building Automation System networks have i...
Presented herein are innovative techniques for analyzing network traffic and identifying anomalous p...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
Detecting anomalous traffic with low false alarm rates is of primary interest in IP networks managem...