Recognizing and Splitting Conditional Sentences for Automation of Business Processes Management

Ngoc Phuoc An Vo, Irene Manotas, Octavian Popescu, A. Černiauskas, V. Sheinin
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引用次数: 3

Abstract

Business Process Management (BPM) is the discipline which is responsible for management of discovering, analyzing, redesigning, monitoring, and controlling business processes. One of the most crucial tasks of BPM is discovering and modelling business processes from text documents. In this paper, we present our system that resolves an end-to-end problem consisting of 1) recognizing conditional sentences from technical documents, 2) finding boundaries to extract conditional and resultant clauses from each conditional sentence, and 3) categorizing resultant clause as Action or Consequence which later helps to generate new steps in our business process model automatically. We created a new dataset and three models to solve this problem. Our best model achieved very promising results of 83.82, 87.84, and 85.75 for Precision, Recall, and F1, respectively, for extracting Condition, Action, and Consequence clauses using Exact Match metric.
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面向业务流程管理自动化的条件句识别与拆分
业务流程管理(BPM)是负责发现、分析、重新设计、监视和控制业务流程的管理的学科。BPM最重要的任务之一是从文本文档中发现和建模业务流程。在本文中,我们提出了一个解决端到端问题的系统,该系统包括:1)从技术文档中识别条件句;2)从每个条件句中找到提取条件和结果子句的边界;3)将结果子句分类为Action或Consequence,这有助于在业务流程模型中自动生成新步骤。我们创建了一个新的数据集和三个模型来解决这个问题。我们的最佳模型在使用Exact Match度量提取条件、动作和后果子句方面,在Precision、Recall和F1方面分别取得了83.82、87.84和85.75的非常有希望的结果。
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