Practical Machine Learning for Cloud Intrusion Detection: Challenges and the Way Forward

R. Kumar, Andrew W. Wicker, Matt Swann
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引用次数: 37

Abstract

Operationalizing machine learning based security detections is extremely challenging, especially in a continuously evolving cloud environment. Conventional anomaly detection does not produce satisfactory results for analysts that are investigating security incidents in the cloud. Model evaluation alone presents its own set of problems due to a lack of benchmark datasets. When deploying these detections, we must deal with model compliance, localization, and data silo issues, among many others. We pose the problem of "attack disruption" as a way forward in the security data science space. In this paper, we describe the framework, challenges, and open questions surrounding the successful operationalization of machine learning based security detections in a cloud environment and provide some insights on how we have addressed them.
云入侵检测的实用机器学习:挑战和前进的方向
实施基于机器学习的安全检测极具挑战性,特别是在不断发展的云环境中。传统的异常检测不能为调查云中的安全事件的分析人员产生令人满意的结果。由于缺乏基准数据集,模型评估本身就存在一系列问题。在部署这些检测时,我们必须处理模型遵从性、本地化和数据竖井等问题。我们将“攻击中断”问题作为安全数据科学领域的前进方向。在本文中,我们描述了在云环境中成功实施基于机器学习的安全检测的框架、挑战和开放问题,并就我们如何解决这些问题提供了一些见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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