AutoEPRS-20: Extracting Business Process Redesign Suggestions from Natural Language Text

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Abstract

In this paper, we have defined an NLP task, for the automatic extraction of business process redesign suggestions from natural language text. In particular, we have employed a systematic protocol to define the task, which is composed of three elements and three sub-Tasks the elements are: A) a real-world process model, b) actual feedback in natural language text, and c) three-level classification of the feedback the task is composed of two binary and one multi-class classification sub-Tasks the evaluation of the AutoEPRS-20 task is performed using six traditional supervised learning techniques the results show that the third sub-Task is more challenging that the two binary sub-Tasks.

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Mustansir, A., Shahzad, K., & Malik, M. K. (2020). AutoEPRS-20: Extracting Business Process Redesign Suggestions from Natural Language Text. In Proceedings - 2020 35th IEEE/ACM International Conference on Automated Software Engineering Workshops, ASEW 2020 (pp. 118–124). Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1145/3417113.3423374

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