In a randomized DDoS attack with increasing emulation dictionary, the bots try to hide their malicious activity by disguising their traffic patterns as "normal" traffic patterns. In this work, we extend the DDoS class introduced in [1], [2] to the case of a multi-clustered botnet, whose main feature is that the emulation dictionary is split over the botnet, giving rise to multiple botnet clusters. We propose two strategies to identify the botnet in such challenging scenario, one based on cluster expurgation, the other one on a union rule. Consistency of both algorithms under ideal conditions is ascertained, while their performance is examined over real network traces
Internet distributed denial of service (DDoS) attacks are prevalent but hard to defend against, part...
A botnet is a malware program that a hacker remotely controls called a botmaster. Botnet can perform...
In this paper, we provide an approach to detect network dictionary attacks using a data set collecte...
In a randomized DDoS attack with increasing emulation dictionary, the bots try to hide their malicio...
In a Distributed Denial of Service (DDoS) attack, a network (botnet) of dispersed agents (bots) send...
We consider the problem of identifying the members of a botnet under an application-layer (L7) DDoS ...
Distributed Denial-of-Service (DDoS) attacks are usually launched through the botnet, an 'army' of c...
Recently, Botnets have become a common tool for implementing and transferring various malicious code...
Botnets are now the key platform for many Internet attacks, such as spam, distributed denial-of-serv...
International audienceEfficient bot detection is a crucial security matter and widely explored in th...
An article presents the approach for the botnets’ low-rate a DDoS-attacks detection based on the bot...
Attackers are increasingly using large networks of compromised machines to carry out further attacks...
Botnets’ diversity and dynamism challenge detection and classification algorithms depend heavily on ...
Abstract—Botnets (networks of compromised computers) are often used for malicious activities such as...
Known for a long time, Distributed Denial-of-Service (DDoS) attacks are still prevalent today and ca...
Internet distributed denial of service (DDoS) attacks are prevalent but hard to defend against, part...
A botnet is a malware program that a hacker remotely controls called a botmaster. Botnet can perform...
In this paper, we provide an approach to detect network dictionary attacks using a data set collecte...
In a randomized DDoS attack with increasing emulation dictionary, the bots try to hide their malicio...
In a Distributed Denial of Service (DDoS) attack, a network (botnet) of dispersed agents (bots) send...
We consider the problem of identifying the members of a botnet under an application-layer (L7) DDoS ...
Distributed Denial-of-Service (DDoS) attacks are usually launched through the botnet, an 'army' of c...
Recently, Botnets have become a common tool for implementing and transferring various malicious code...
Botnets are now the key platform for many Internet attacks, such as spam, distributed denial-of-serv...
International audienceEfficient bot detection is a crucial security matter and widely explored in th...
An article presents the approach for the botnets’ low-rate a DDoS-attacks detection based on the bot...
Attackers are increasingly using large networks of compromised machines to carry out further attacks...
Botnets’ diversity and dynamism challenge detection and classification algorithms depend heavily on ...
Abstract—Botnets (networks of compromised computers) are often used for malicious activities such as...
Known for a long time, Distributed Denial-of-Service (DDoS) attacks are still prevalent today and ca...
Internet distributed denial of service (DDoS) attacks are prevalent but hard to defend against, part...
A botnet is a malware program that a hacker remotely controls called a botmaster. Botnet can perform...
In this paper, we provide an approach to detect network dictionary attacks using a data set collecte...