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Using analysis of temporal variances within a honeypot dataset to better predict attack type probability

机译:使用蜜罐数据集中的时间差异分析更好地预测攻击型概率

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Honeypots are deployed to capture cyber attack data for analysis of attacker behavior. This paper analyses a honeypot dataset to establish attack types and corresponding temporal patterns. It calculates the probability of each attack type occurring at a particular time of day and tests these probabilities with a random sample from the honeypot dataset. Attacks can take many forms and can come from different geographical sources. Temporal patterns in attacks are often observed due to the diurnal nature of computer usage and thus attack types captured on a honeypot will also reflect these patterns. We propose that it is possible to determine the probability of differing attack types occurring at certain times of the day. Understanding attack behavior informs the implementation of more robust security measures. The paper also proposes automating this process to create dynamic and adaptive honeypots. An adaptive honeypot that can modify its security levels, can increase the attack vector at different times of the day. This will improve data collection for analysis that ultimately will lead to better cyber defenses.
机译:部署蜜罐以捕获网络攻击数据以分析攻击者行为。本文分析了蜜罐数据集以建立攻击类型和相应的时间模式。它计算在一天的特定时间发生的每个攻击类型的概率,并使用来自蜜罐数据集的随机样本测试这些概率。攻击可能需要多种形式,可以来自不同的地理来源。由于计算机使用的昼夜性质,通常观察到攻击中的时间模式,因此在蜜罐上捕获的攻击类型也将反映这些模式。我们建议可以确定在一天中某些时间发生的不同攻击类型的概率。了解攻击行为通知实施更强大的安全措施。本文还提出了自动化此过程以创建动态和自适应蜜罐。可以修改其安全级别的自适应蜜罐可以增加一天中不同时间的攻击载体。这将改善数据收集以进行分析,最终将导致更好的网络防御。

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