The number of disclosed vulnerabilities has been steadily increasing over the years. At the same time, organizations face significant challenges patching their systems, leading to a need to prioritize vulnerability remediation in order to reduce the risk of attacks. Unfortunately, existing vulnerability scoring systems are either vendor-specific, proprietary, or are only commercially available. Moreover, these and other prioritization strategies based on vulnerability severity are poor predictors of actual vulnerability exploitation because they do not incorporate new information that might impact the likelihood of exploitation. In this paper we present the efforts behind building a Special Interest Group (SIG) that seeks to develop a completely data-driven exploit scoring system that produces scores for all known vulnerabilities, that is freely available, and which adapts to new information. The Exploit Prediction Scoring System (EPSS) SIG consists of more than 170 experts from around the world and across all industries, providing crowd-sourced expertise and feedback. Based on these collective insights, we describe the design decisions and trade-offs that lead to the development of the next version of EPSS. This new machine learning model provides an 82\% performance improvement over past models in distinguishing vulnerabilities that are exploited in the wild and thus may be prioritized for remediation.
翻译:多年来,披露的脆弱程度数量一直在稳步增加。与此同时,各组织面临巨大的挑战,需要调整其系统,从而需要优先处理脆弱程度补救,以减少攻击的风险。不幸的是,现有的脆弱程度评分系统不是供应商专用的,就是专有的,或只是商业上可以使用。此外,这些基于脆弱程度的这些和其他优先排序战略没有很好地预测实际的脆弱程度剥削情况,因为它们没有包含可能影响剥削可能性的新信息。在本文件中,我们介绍了建立一个特殊利益小组(SIG)的努力,该特别利益小组寻求开发一个完全以数据为驱动的剥削性评分系统,这个系统可以免费提供所有已知脆弱程度的分数,并适应新的信息。剥削预测系统(EPSS)由来自世界各地和所有行业的170多名专家组成,提供众包的专门知识和反馈。我们根据这些集体的见解,描述了导致开发下版EPSSS系统的设计决定和交易。这个新的机器学习模式为区分野生中被利用的脆弱性提供了82-----级业绩改进了过去的模型,从而可以优先进行补救。</s>