A Machine Learning and Optimization Framework for Efficient Alert Management in a Cybersecurity Operations Center

Jalal Ghadermazi, Ankit Shah, Sushil Jajodia
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Abstract

Cybersecurity operations centers (CSOCs) protect organizations by monitoring network traffic and detecting suspicious activities in the form of alerts. The security response team within CSOCs is responsible for investigating and mitigating alerts. However, an imbalance between alert volume and available analysts creates a backlog, putting the network at risk of exploitation. Recent research has focused on improving the alert management process by triaging alerts, optimizing analyst scheduling, and reducing analyst workload through systematic discarding of alerts. However, these works overlook the delays caused in alert investigations by several factors, including: (i) False or benign alerts contributing to the backlog. (ii) Analysts experiencing cognitive burden from repeatedly reviewing unrelated alerts. (iii) Analysts being assigned to alerts that do not match well with their expertise. We propose a novel framework that considers these factors and utilizes machine learning and mathematical optimization methods to dynamically improve throughput during work shifts. The framework achieves efficiency by automating the identification and removal of a portion of benign alerts, forming clusters of similar alerts, and assigning analysts to alerts with matching attributes. Experiments conducted using real-world CSOC data demonstrate a 60.16% reduction in the alert backlog for an 8-hour work shift compared to currently employed approach.
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网络安全运营中心高效警报管理的机器学习和优化框架
网络安全运营中心(CSOC)通过监控网络流量和检测以警报形式出现的可疑活动来保护组织。CSOC 内的安全响应团队负责调查和缓解警报。然而,警报数量与可用分析人员之间的不平衡造成了积压,使网络面临被利用的风险。最近的研究重点是通过对警报进行分流、优化分析人员的调度以及通过系统性地丢弃警报来减少分析人员的工作量来改进警报管理流程。然而,这些研究忽略了多个因素对警报调查造成的延误,其中包括:(i) 虚假或良性警报造成积压。(ii) 分析员因重复审查无关的警报而产生认知负担。(iii) 分析师被指派处理与其专业知识不符的警报。我们提出了一个新颖的框架,该框架考虑了这些因素,并利用机器学习和数学优化方法来动态提高轮班期间的吞吐量。该框架通过自动识别和移除部分良性警报、形成类似警报集群以及将分析员分配给具有匹配属性的警报来提高效率。使用真实的 CSOC 数据进行的实验表明,与目前采用的方法相比,8 小时轮班工作的警报积压量减少了 60.16%。
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