Optimal Evidence Collection for Accountability in the Cloud

Fatma Masmoudi, M. Sellami, M. Loulou, A. Kacem
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Abstract

In multi-tenant cloud services, accountability can be used to strengthen the trust of tenants in the cloud. It provides the reassurance that the processing of personal data hosted in the cloud is done according to tenants' requirements (a.k.a. accountability obligations). Ensuring accountability requires multiple measures ranging from preventive controls to violation detection and analysis, based on evidences so as to prove that a violation has occurred or to ensure violation judgment. In a complex cloud environment with multi-tenant services, judging violations encounters difficulties due to the plethora of evidences to be analyzed, which may burden the post-violation analysis in terms of latency and workloads. In this work, we offer a method ensuring the collection of the necessary and minimal (optimal) evidences and avoiding re-evaluating all of them for each violated obligation. Basically, we use a linear program -with an objective function under a set of constraints-and we perform actions in order to obtain optimal evidences elements for the judgment. Finally, our approach is implemented and the results of our experiments highlight its feasibility.
云中问责制的最佳证据收集
在多租户云服务中,可使用问责制来加强云计算中租户的信任。它保证了托管在云中的个人数据的处理是根据租户的要求完成的(也就是问责义务)。确保问责制需要采取多种措施,从预防控制到违规检测和分析,以证据为基础,以证明违规行为已经发生或确保违规判断。在具有多租户服务的复杂云环境中,由于需要分析的证据过多,违规判断会遇到困难,这可能会在延迟和工作负载方面增加违规后分析的负担。在这项工作中,我们提供了一种方法,确保收集必要的和最小的(最佳)证据,并避免为每个违反义务重新评估所有证据。基本上,我们使用线性规划-在一组约束下具有目标函数-并且我们执行动作以获得判断的最佳证据元素。最后,对该方法进行了实际应用,实验结果表明了该方法的可行性。
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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