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User-guided discovery of declarative process models

机译:用户指导的声明式流程模型发现

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Process mining techniques can be used to effectively discover process models from logs with example behaviour. Cross-correlating a discovered model with information in the log can be used to improve the underlying process. However, existing process discovery techniques have two important drawbacks. The produced models tend to be large and complex, especially in flexible environments where process executions involve multiple alternatives. This “overload” of information is caused by the fact that traditional discovery techniques construct procedural models explicitly showing all possible behaviours. Moreover, existing techniques offer limited possibilities to guide the mining process towards specific properties of interest. These problems can be solved by discovering declarative models. Using a declarative model, the discovered process behaviour is described as a (compact) set of rules. Moreover, the discovery of such models can easily be guided in terms of rule templates. This paper uses DECLARE, a declarative language that provides more flexibility than conventional procedural notations such as BPMN, Petri nets, UML ADs, EPCs and BPEL. We present an approach to automatically discover DECLARE models. This has been implemented in the process mining tool ProM. Our approach and toolset have been applied to a case study provided by the company Thales in the domain of maritime safety and security.
机译:可以使用过程挖掘技术从具有示例行为的日志中有效地发现过程模型。将发现的模型与日志中的信息进行互相关可用于改善基础过程。但是,现有的过程发现技术具有两个重要的缺点。生成的模型往往庞大而复杂,尤其是在流程执行涉及多种选择的灵活环境中。信息的这种“超载”是由以下事实造成的:传统的发现技术构建了明确显示所有可能行为的程序模型。此外,现有技术提供了将采矿过程引向感兴趣的特定特性的有限可能性。通过发现声明性模型可以解决这些问题。使用声明性模型,将发现的过程行为描述为(紧凑)规则集。此外,可以根据规则模板轻松地指导此类模型的发现。本文使用DECLARE,这是一种声明性语言,比诸如BPMN,Petri网,UML AD,EPC和BPEL之类的常规过程符号提供了更大的灵活性。我们提出了一种自动发现DECLARE模型的方法。这已在过程挖掘工具ProM中实现。我们的方法和工具集已应用于Thales公司在海上安全和保障领域提供的案例研究。

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