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Learning Planning Model for Semantic Process Compensation

机译:语义过程补偿学习规划模型

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Recent advancements in business process conformance analysis have shown that the detection of non-conformance states can be learned with discovering inconsistencies between process models and their historical execution logs, despite their real behaviour. A key challenge in managing business processes is compensating non-conformance states. The concentration of this work is on the hardest aspect of the challenge, where the process might be structurally conformant, but it does not achieve an effect conform to what is required by design. In this work, we propose learning and planning model to address the compensation of semantically non-conformance states. Our work departs from the integration of two well-known AI paradigms, Machine Learning (ML) and Automated Planning (AP). Learning model is divided into two models to address two planning problems: learning predictive model that provides the planner with the ability to respond to violation points during the execution of the process model, and instance-based learning model that provides the planer with a compensation based on the nearest class when there are no compensations perfectly fit to the violation point.
机译:业务流程一致性分析的最新进步表明,尽管他们的真实行为,但可以通过发现过程模型与历史执行日志之间的不一致来了解不符合状态的检测。管理业务流程中的一个关键挑战正在弥补不合格状态。这项工作的浓度是挑战的最艰难的方面,其中过程可能是结构形式的,但它没有达到符合设计所需的效果。在这项工作中,我们提出了学习和规划模型来解决语义不符合国家的补偿。我们的工作离开了两种着名的AI范例,机器学习(ML)和自动规划(AP)的整合。学习模型分为两种模型来解决两个计划问题:学习预测模型,提供规划师的能力在执行过程模型期间响应违规点,以及基于实例的学习模型,提供基于补偿的刨门在最近的课程上,没有补偿,完美地适应违规点。

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