2,522 research outputs found

    DDoS-Capable IoT Malwares: comparative analysis and Mirai Investigation

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    The Internet of Things (IoT) revolution has not only carried the astonishing promise to interconnect a whole generation of traditionally “dumb” devices, but also brought to the Internet the menace of billions of badly protected and easily hackable objects. Not surprisingly, this sudden flooding of fresh and insecure devices fueled older threats, such as Distributed Denial of Service (DDoS) attacks. In this paper, we first propose an updated and comprehensive taxonomy of DDoS attacks, together with a number of examples on how this classification maps to real-world attacks. Then, we outline the current situation of DDoS-enabled malwares in IoT networks, highlighting how recent data support our concerns about the growing in popularity of these malwares. Finally, we give a detailed analysis of the general framework and the operating principles of Mirai, the most disruptive DDoS-capable IoT malware seen so far

    OnionBots: Subverting Privacy Infrastructure for Cyber Attacks

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    Over the last decade botnets survived by adopting a sequence of increasingly sophisticated strategies to evade detection and take overs, and to monetize their infrastructure. At the same time, the success of privacy infrastructures such as Tor opened the door to illegal activities, including botnets, ransomware, and a marketplace for drugs and contraband. We contend that the next waves of botnets will extensively subvert privacy infrastructure and cryptographic mechanisms. In this work we propose to preemptively investigate the design and mitigation of such botnets. We first, introduce OnionBots, what we believe will be the next generation of resilient, stealthy botnets. OnionBots use privacy infrastructures for cyber attacks by completely decoupling their operation from the infected host IP address and by carrying traffic that does not leak information about its source, destination, and nature. Such bots live symbiotically within the privacy infrastructures to evade detection, measurement, scale estimation, observation, and in general all IP-based current mitigation techniques. Furthermore, we show that with an adequate self-healing network maintenance scheme, that is simple to implement, OnionBots achieve a low diameter and a low degree and are robust to partitioning under node deletions. We developed a mitigation technique, called SOAP, that neutralizes the nodes of the basic OnionBots. We also outline and discuss a set of techniques that can enable subsequent waves of Super OnionBots. In light of the potential of such botnets, we believe that the research community should proactively develop detection and mitigation methods to thwart OnionBots, potentially making adjustments to privacy infrastructure.Comment: 12 pages, 8 figure

    DDoS Attacks with Randomized Traffic Innovation: Botnet Identification Challenges and Strategies

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    Distributed Denial-of-Service (DDoS) attacks are usually launched through the botnetbotnet, an "army" of compromised nodes hidden in the network. Inferential tools for DDoS mitigation should accordingly enable an early and reliable discrimination of the normal users from the compromised ones. Unfortunately, the recent emergence of attacks performed at the application layer has multiplied the number of possibilities that a botnet can exploit to conceal its malicious activities. New challenges arise, which cannot be addressed by simply borrowing the tools that have been successfully applied so far to earlier DDoS paradigms. In this work, we offer basically three contributions: i)i) we introduce an abstract model for the aforementioned class of attacks, where the botnet emulates normal traffic by continually learning admissible patterns from the environment; ii)ii) we devise an inference algorithm that is shown to provide a consistent (i.e., converging to the true solution as time progresses) estimate of the botnet possibly hidden in the network; and iii)iii) we verify the validity of the proposed inferential strategy over realreal network traces.Comment: Submitted for publicatio

    A survey of defense mechanisms against distributed denial of service (DDOS) flooding attacks

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    Distributed Denial of Service (DDoS) flooding attacks are one of the biggest concerns for security professionals. DDoS flooding attacks are typically explicit attempts to disrupt legitimate users' access to services. Attackers usually gain access to a large number of computers by exploiting their vulnerabilities to set up attack armies (i.e., Botnets). Once an attack army has been set up, an attacker can invoke a coordinated, large-scale attack against one or more targets. Developing a comprehensive defense mechanism against identified and anticipated DDoS flooding attacks is a desired goal of the intrusion detection and prevention research community. However, the development of such a mechanism requires a comprehensive understanding of the problem and the techniques that have been used thus far in preventing, detecting, and responding to various DDoS flooding attacks. In this paper, we explore the scope of the DDoS flooding attack problem and attempts to combat it. We categorize the DDoS flooding attacks and classify existing countermeasures based on where and when they prevent, detect, and respond to the DDoS flooding attacks. Moreover, we highlight the need for a comprehensive distributed and collaborative defense approach. Our primary intention for this work is to stimulate the research community into developing creative, effective, efficient, and comprehensive prevention, detection, and response mechanisms that address the DDoS flooding problem before, during and after an actual attack. © 1998-2012 IEEE

    FHSD: An improved IP spoof detection method for web DDoS attacks

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    Distributed denial of service (DDoS) attacks represent a significant threat for companies, affecting them on a regular basis, as reported in the 2013 Information Security Breaches Survey (Technical Report. http://www.pwc.co.uk/assets/pdf/cyber-security-2013-technical-report.pdf.). The most common target is web services, the downtime of which could lead to significant monetary costs and loss of reputation. IP spoofing is often used in DDoS attacks not only to protect the identity of offending bots but also to overcome IP-based filtering controls. This paper aims to propose a new multi-layer IP Spoofing detection mechanism, called fuzzy hybrid spoofing detector (FHSD), which is based on source MAC address, hop count, GeoIP, OS passive fingerprinting and web browser user agent. The hop count algorithm has been optimized to limit the need for continuous traceroute requests, by querying the subnet IP Address and GeoIP information instead of individual IP addresses. FHSD uses fuzzy empirical rules and fuzzy largest of maximum operator to identify offensive IPs and mitigate offending traffic. The proposed system was developed and tested against the BoNeSi DDoS emulator with encouraging results in terms of detection and performance. Specifically, FHSD analysed 10 000 packets, and correctly identified 99.99% of spoofed traffic in <5 s. It also reduced the need for traceroute requests by 97%
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