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首页> 外文期刊>Journal of Intelligent Information Systems >Discovering anomalous frequent patterns from partially ordered event logs
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Discovering anomalous frequent patterns from partially ordered event logs

机译:从部分排序的事件日志中发现异常的频繁模式

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摘要

Conformance checking allows organizations to compare process executions recorded by the IT system against a process model representing the normative behavior. Most of the existing techniques, however, are only able to pinpoint where individual process executions deviate from the normative behavior, without considering neither possible correlations among occurred deviations nor their frequency. Moreover, the actual control-flow of the process is not taken into account in the analysis. Neglecting possible parallelisms among process activities can lead to inaccurate diagnostics; it also poses some challenges in interpreting the results, since deviations occurring in parallel behaviors are often instantiated in different sequential behaviors in different traces. In this work, we present an approach to extract anomalous frequent patterns from historical logging data. The extracted patterns can exhibit parallel behaviors and correlate recurrent deviations that have occurred in possibly different portions of the process, thus providing analysts with a valuable aid for investigating nonconforming behaviors. Our approach has been implemented as a plug-in of the ESub tool and evaluated using both synthetic and real-life logs.
机译:符合性检查使组织可以将IT系统记录的流程执行与代表规范行为的流程模型进行比较。但是,大多数现有技术仅能查明各个流程执行偏离规范行为的位置,而无需考虑发生的偏差之间的可能相关性或频率。此外,在分析中未考虑过程的实际控制流。忽略流程活动之间可能的并行性可能导致诊断不准确;由于在并行行为中发生的偏差通常会在不同轨迹中的不同顺序行为中实例化,因此在解释结果时也会遇到一些挑战。在这项工作中,我们提出了一种从历史测井数据中提取异常频繁模式的方法。所提取的模式可以表现出平行行为,并关联在过程的不同部分可能发生的经常性偏差,从而为分析师提供了调查不合格行为的宝贵帮助。我们的方法已实现为ESub工具的插件,并使用综合日志和实际日志进行了评估。

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