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A markov prediction model for data-driven semi-structured business processes

机译:用于数据驱动的半结构化业务流程的Markov预测模型

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In semi-structured case-oriented business processes, the sequence of process steps is determined by case workers based on available document content associated with a case. Transitions between process execution steps are therefore case specific and depend on independent judgment of case workers. In this paper, we propose an instance-specific probabilistic process model (PPM) whose transition probabilities are customized to the semi-structured business process instance it represents. An instance-specific PPM serves as a powerful representation to predict the likelihood of different outcomes. We also show that certain instance-specific PPMs can be transformed into a Markov chain under some non-restrictive assumptions. For instance-specific PPMs that contain parallel execution of tasks, we provide an algorithm to map them to an extended space Markov chain. This way existing Markov techniques can be leveraged to make predictions about the likelihood of executing future tasks. Predictions provided by our technique could generate early alerts for case workers about the likelihood of important or undesired outcomes in an executing case instance. We have implemented and validated our approach on a simulated automobile insurance claims handling semi-structured business process. Results indicate that an instance-specific PPM provides more accurate predictions than other methods such as conditional probability. We also show that as more document data become available, the prediction accuracy of an instance-specific PPM increases.
机译:在半结构的面向案例的业务流程中,流程步骤的顺序由案例工作者根据与案例关联的可用文档内容确定。因此,流程执行步骤之间的转换是针对案例的,并取决于案例工作者的独立判断。在本文中,我们提出了一个特定于实例的概率过程模型(PPM),其转移概率针对其表示的半结构化业务流程实例进行了定制。特定于实例的PPM可作为功能强大的表示来预测不同结果的可能性。我们还表明,在某些非限制性假设下,某些特定于实例的PPM可以转换为马尔可夫链。对于包含任务并行执行的特定于实例的PPM,我们提供了一种算法来将它们映射到扩展的空间马尔可夫链。这样,可以利用现有的马尔可夫技术对执行未来任务的可能性进行预测。我们的技术提供的预测可能会为案例工作者生成有关执行中的案例中重要或不希望的结果的可能性的早期警报。我们已经在模拟汽车保险索赔处理半结构化业务流程中实施并验证了我们的方法。结果表明,实例特定的PPM比其他方法(例如条件概率)提供的预测更准确。我们还表明,随着越来越多的文档数据变得可用,特定于实例的PPM的预测准确性将提高。

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