APRM to Isolate Behavior (Frequent or Infrequent) by using Cross-Organizational Process Mining

Pavithra. J Ms
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Abstract

Process mining is a generally youthful and creating research zone with the primary thought of finding, checking and enhancing forms by removing data from occasion logs. Going out on a limb viewpoint on the business procedure administration (BPM) lifecycle has in this manner been perceived as a fundamental research stream. Notwithstanding significant information on hazard mindful BPM with an attention on process configuration, existing methodologies for real time chance observing regard occurrences as confined when identifying dangers. To address this hole, we propose an approach for Anomaly Predictive - Risk Monitoring (APRM). This approach naturally spreads chance data, which has been identified by means of hazard sensors, crosswise over comparable running occasions of a similar procedure progressively. We show APRMs capacity of prescient hazard checking by applying it with regards to a certifiable situation. With the expansion of distributed computing and shared foundations, occasion logs of various associations are accessible for examination where cross-hierarchical process mining remains with the open door for associations gaining from each other. Created proposal comes about demonstrate that the utilization of this approach can help clients to concentrate on the parts of process models with potential execution change, which are hard to spot physically and outwardly.
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APRM通过使用跨组织过程挖掘来隔离行为(频繁或不频繁)
流程挖掘是一个新兴的研究领域,其主要思想是通过从日志中删除数据来查找、检查和增强表单。以这种方式,对业务流程管理(BPM)生命周期进行大胆的研究已经被视为一种基础研究流。尽管有关于注意危险的BPM并关注流程配置的重要信息,但现有的实时机会观察方法在识别危险时将事件视为受限的。为了解决这一漏洞,我们提出了一种异常预测风险监测(APRM)方法。这种方法自然地将通过危险传感器识别的偶然数据,在类似程序的可比运行场合中逐步横向传播。我们通过将aprm应用于可验证的情况来展示其预见性危险检查的能力。随着分布式计算和共享基础的扩展,可以访问各种关联的场合日志,其中跨层次过程挖掘仍然为关联相互获取敞开大门。创建的建议表明,使用此方法可以帮助客户将注意力集中在流程模型中具有潜在执行更改的部分,这些部分很难在物理上和外部发现。
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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