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Statistical relational learning for workflow mining

机译:用于工作流挖掘的统计关系学习

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The management of business processes can support efficiency improvements in organizations. One of the most interesting problems is the mining and representation of process models in a declarative language. Various recently proposed knowledge-based languages showed advantages over graph-based procedural notations. Moreover, rapid changes of the environment require organizations to check how compliant are new process instances with the deployed models. We present a Statistical Relational Learning approach to Workflow Mining that takes into account both flexibility and uncertainty in real environments. It performs automatic discovery of process models expressed in a probabilistic logic. It uses the existing DPML algorithm for extracting first-order logic constraints from process logs. The constraints are then translated into Markov Logic to learn their weights. Inference on the resulting Markov Logic model allows a probabilistic classification of test traces, by assigning them the probability of being compliant to the model. We applied this approach to three datasets and compared it with DPML alone, five Petri net- and EPC-based process mining algorithms and Tilde. The technique is able to better classify new execution traces, showing higher accuracy and areas under the PR/ROC curves in most cases.
机译:业务流程的管理可以支持组织效率的提高。最有趣的问题之一是以声明性语言进行过程模型的挖掘和表示。最近提出的各种基于知识的语言都比基于图的过程符号更具优势。此外,环境的快速变化要求组织检查新流程实例与已部署模型的符合性。我们提出了一种用于工作流挖掘的统计关系学习方法,该方法考虑了实际环境中的灵活性和不确定性。它执行以概率逻辑表示的过程模型的自动发现。它使用现有的DPML算法从流程日志中提取一阶逻辑约束。然后将约束转换为马尔可夫逻辑以了解其权重。通过对结果迹线的马尔可夫逻辑模型进行推论,可以通过对测试迹线分配与模型相符的概率来对它们进行概率分类。我们将此方法应用于三个数据集,并将其与单独的DPML,五种基于Petri网和EPC的过程挖掘算法以及Tilde进行了比较。该技术能够更好地对新的执行轨迹进行分类,从而在大多数情况下显示出更高的准确性和PR / ROC曲线下的区域。

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