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FeedRank: A tamper- resistant method for the ranking of cyber threat intelligence feeds

机译:Feedrank:一种抗篡改方法,用于网络威胁情报源的排名

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Organizations increasingly rely on cyber threat intelligence feeds to protect their infrastructure from attacks. These feeds typically list IP addresses or domains associated with malicious activities such as spreading malware or participating in a botnet. Today, there is a rich ecosystem of commercial and free cyber threat intelligence feeds, making it difficult, yet essential, for network defenders to quantify the quality and to select the optimal set of feeds to follow. Selecting too many or low- quality feeds results in many false alerts, while considering too few feeds increases the risk of missing relevant threats. Na?ve individual metrics like size and update rate give a somewhat good overview about a feed, but they do not allow conclusions about its quality and they can easily be manipulated by feed providers. In this paper, we present FeedRank, a novel ranking approach for cyber threat intelligence feeds. In contrast to individual metrics, FeedRank is robust against tampering attempts by feed providers. FeedRank's key insight is to rank feeds according to the originality of their content and the reuse of entries by other feeds. Such correlations between feeds are modelled in a graph, which allows FeedRank to find temporal and spatial correlations without requiring any ground truth or an operator's feedback. We illustrate FeedRank's usefulness with two characteristic examples: (i) selecting the best feeds that together contain as many distinct entries as possible; and (ii) selecting the best feeds that list new entries before they appear on other feeds. We evaluate FeedRank based on a large set of real feeds. The evaluation shows that FeedRank identifies dishonest feeds as outliers and that dishonest feeds do not achieve a better FeedRank score than the top-rated real feeds.
机译:组织越来越依赖网络威胁情报饲料,以保护他们的基础设施免受攻击。这些馈送通常列出与恶意活动相关联的IP地址或域,例如传播恶意软件或参与僵尸网络。今天,有一个丰富的商业和自由网络威胁情报饲料的生态系统,使得网络防守者难以实现质量,并且选择要遵循的最佳饲料集。选择太多或低质量的饲料导致许多错误警报,同时考虑到太少的饲料会增加缺失相关威胁的风险。 vale vale vale vale尺寸和更新速率等尺寸和更新速度有关饲料的良好概览,但它们不允许结论其质量,并且可以通过饲料提供商来容易地操纵。在本文中,我们呈现出饲料,一种用于网络威胁情报饲料的新型排名方法。与个人度量标准相比,FeedRank对馈送提供商的篡改尝试是强大的。 FeedRank的关键洞察力是根据其内容的原创性和其他馈送重用条目的饲料等级。馈送之间的这种相关性在图表中建模,其允许进料进入寻找时间和空间相关性而不需要任何地面真相或操作员的反馈。我们说明了对两个特征示例的基础的有用性:(i)选择最佳馈送,其中包含尽可能多的不同条目; (ii)在其他源之前选择列出新条目的最佳馈送。我们评估基于一组大型真实饲料的提炼机器。评估表明,FeedRank将不诚实的饲料识别为异常值,并且不诚实的饲料不会达到比顶级实际馈送更好的进料得分。

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