Adaptive techniques based on machine learning and data mining are gaining relevance in self-management and self-defense for networks and distributed systems. In this paper, we focus on early detection and stopping of distributed flooding attacks and network abuses. We extend the framework proposed by Zhang and Parashar (2006) to cooperatively detect and react to abnormal behaviors before the target machine collapses and network performance degrades. In this frame-work, nodes in an intermediate network share information about their local traffic observations, improving their global traffic perspective. In our proposal, we add to each node the ability of learn-ing independently, therefore reacting differently according to its situation in the...
SYN flood is a commonly used Distributed Denial of Service (DDoS) attack. SYN flood DDoS attacks con...
The impact of computer networks on modern society cannot be estimated. Arguably, computer networks a...
Data mining aims to extract from huge amount of data stochastic theories, called knowledge models, t...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
Abstract — Adaptive techniques based on machine learning and data mining are gaining relevance in se...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
[[abstract]](1) Background: Link flooding attacks (LFA) are a spatiotemporal attack pattern of distr...
Currently, online organizational resources and assets are potential targets of several types of atta...
International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online...
Flooding attack is a network attack that sends a large amount of traffic to thevictim networks or se...
This thesis presents a novel approach to provide adaptive mechanisms to detect and categorise Floodi...
Recently, a serious disturbance for network security could be a Distributed Denial of Service (DDoS)...
This paper examined the impact of a network attack on a congested transmission session. The research...
Current intrusion detection solutions are based on signature or rule-based detection. The large numb...
Flooding attack is a network attack that sends a large amount of traffic to the victim networks or s...
SYN flood is a commonly used Distributed Denial of Service (DDoS) attack. SYN flood DDoS attacks con...
The impact of computer networks on modern society cannot be estimated. Arguably, computer networks a...
Data mining aims to extract from huge amount of data stochastic theories, called knowledge models, t...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
Abstract — Adaptive techniques based on machine learning and data mining are gaining relevance in se...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
[[abstract]](1) Background: Link flooding attacks (LFA) are a spatiotemporal attack pattern of distr...
Currently, online organizational resources and assets are potential targets of several types of atta...
International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online...
Flooding attack is a network attack that sends a large amount of traffic to thevictim networks or se...
This thesis presents a novel approach to provide adaptive mechanisms to detect and categorise Floodi...
Recently, a serious disturbance for network security could be a Distributed Denial of Service (DDoS)...
This paper examined the impact of a network attack on a congested transmission session. The research...
Current intrusion detection solutions are based on signature or rule-based detection. The large numb...
Flooding attack is a network attack that sends a large amount of traffic to the victim networks or s...
SYN flood is a commonly used Distributed Denial of Service (DDoS) attack. SYN flood DDoS attacks con...
The impact of computer networks on modern society cannot be estimated. Arguably, computer networks a...
Data mining aims to extract from huge amount of data stochastic theories, called knowledge models, t...