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Creators/Authors contains: "Park, Jeman"

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  1. Free, publicly-accessible full text available February 25, 2026
  2. Distributed Denial-of-Service (DDoS) is a big threat to the security and stability of Internet-based services today. Among the recent advanced application-layer DDoS attacks, the Very Short Intermittent DDoS (VSI-DDoS) is the attack, which can bypass existing detection systems and significantly degrade the QoS experienced by users of web services. However, in order for the VSI-DDoS attack to work effectively, bots participating in the attack should be tightly synchronized, an assumption that is difficult to be met in reality. In this paper, we conducted a quantitative analysis to understand how a minimal deviation from perfect synchronization in botnets affects the performance and effectiveness of the VSI-DDoS attack. We found that VSI-DDoS became substantially less effective. That is, it lost 85.7% in terms of effectiveness under about 90ms synchronization inaccuracy, which is a very small inaccuracy under normal network conditions. 
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  3. Abstract In this paper, we introduce DRIFT, a system for detecting command and control (C2) domain names in Internet of Things–scale botnets. Using an intrinsic feature of malicious domain name queries prior to their registration (perhaps due to clock drift), we devise a difference‐based lightweight feature for malicious C2 domain name detection. Using NXDomain query and response of a popular malware, we establish the effectiveness of our detector with 99% accuracy and as early as more than 48 hours before they are registered. Our technique serves as a tool of detection where other techniques relying on entropy or domain generating algorithms reversing are impractical. 
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