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An ensemble-based approach to the security-oriented classification of low-level log traces

机译:基于合奏的低级日志迹线的面向安全的分类方法

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Traditionally, Expert Systems have found a natural application in the behavioral analysis of processes. In fact, they have proved effective in the tasks of interpreting the data collected during the process executions and of analyzing these data with the aim of diagnosing/detecting anomalies. In this context, we focus on log data generated by executions of business processes, and consider the issue of detecting "insecure" process instances, involving some kind of security breach (e.g. attacks, frauds). We propose a hybrid framework for accomplishing a security-oriented classification of activity-unaware traces, i.e., traces consisting of "low-level" events with no explicit reference to the "high-level" activities the analysts are typically familiar with. The framework integrates two classification approaches traditionally used as alternative ways to decide on the "secureness" of process traces: (i) a model-driven approach, using knowledge of behavioral models expressed at the abstraction level of the activities, and (ii) an example driven approach, exploiting the availability of event sequences labeled by experts as symptomatic of "secure" or "in-secure" behavior. The core of our solution is a meta-classifier combining (i) and (ii) thanks to a probabilistic Montecarlo mechanism that allows the traces to be simultaneously viewed as sequences of low-level events and of high-level activities. The framework has been empirically proved effective in jointly exploiting the two aforementioned forms of knowledge/expertise, typically coming from different experts, and in acting as a sort of "super-expert" classification tool. Its accuracy and efficiency make it a solid basis for implementing a novel kind of expert system for the security-oriented monitoring/analysis of business processes. (C) 2020 Elsevier Ltd. All rights reserved.
机译:传统上,专家系统发现了在流程的行为分析中的自然应用。实际上,他们已经证明了在解释过程执行期间收集的数据的任务以及分析这些数据的目的,他们已经证明了这些数据的目的是诊断/检测异常。在这种情况下,我们专注于通过业务流程执行生成的日志数据,并考虑检测“不安全”流程实例的问题,涉及某种安全漏洞(例如攻击,欺诈)。我们提出了一个混合框架,用于完成活动 - 不知道的安全性 - 不惊的迹线的定向分类,即,由分析师通常熟悉的“高级”活动没有明确引用的“低级”事件组成的痕迹。该框架集成了传统上用作决定过程迹线的“安全性”的替代方式的两种分类方法:(i)使用在活动的抽象级别表现的行为模型知识,以及(ii)的模型驱动方法。(ii)示例驱动方法,利用专家标记为“安全”或“安全”行为的活动序列的可用性。我们的解决方案的核心是元分类器组合(i)和(ii)归功于概率montecarlo机制,允许跟踪同时被视为低级事件和高级活动的序列。该框架经过经验证明,共同利用通常来自不同专家的两种上述形式的知识/专业知识,以及作为一种“超级专家”分类工具。它的准确性和效率使其成为实施新颖的专家系统的坚实基础,以便对业务流程的安全导向/分析进行安全监测/分析。 (c)2020 elestvier有限公司保留所有权利。

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