Saved in:
Bibliographic Details
Main Authors: Neuberger, Julian, Doll, Leonie, Engelmann, Benedict, Ackermann, Lars, Jablonski, Stefan
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.07501
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913310043013120
author Neuberger, Julian
Doll, Leonie
Engelmann, Benedict
Ackermann, Lars
Jablonski, Stefan
author_facet Neuberger, Julian
Doll, Leonie
Engelmann, Benedict
Ackermann, Lars
Jablonski, Stefan
contents Business Process Modeling projects often require formal process models as a central component. High costs associated with the creation of such formal process models motivated many different fields of research aimed at automated generation of process models from readily available data. These include process mining on event logs, and generating business process models from natural language texts. Research in the latter field is regularly faced with the problem of limited data availability, hindering both evaluation and development of new techniques, especially learning-based ones. To overcome this data scarcity issue, in this paper we investigate the application of data augmentation for natural language text data. Data augmentation methods are well established in machine learning for creating new, synthetic data without human assistance. We find that many of these methods are applicable to the task of business process information extraction, improving the accuracy of extraction. Our study shows, that data augmentation is an important component in enabling machine learning methods for the task of business process model generation from natural language text, where currently mostly rule-based systems are still state of the art. Simple data augmentation techniques improved the $F_1$ score of mention extraction by 2.9 percentage points, and the $F_1$ of relation extraction by $4.5$. To better understand how data augmentation alters human annotated texts, we analyze the resulting text, visualizing and discussing the properties of augmented textual data. We make all code and experiments results publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2404_07501
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Leveraging Data Augmentation for Process Information Extraction
Neuberger, Julian
Doll, Leonie
Engelmann, Benedict
Ackermann, Lars
Jablonski, Stefan
Computation and Language
Business Process Modeling projects often require formal process models as a central component. High costs associated with the creation of such formal process models motivated many different fields of research aimed at automated generation of process models from readily available data. These include process mining on event logs, and generating business process models from natural language texts. Research in the latter field is regularly faced with the problem of limited data availability, hindering both evaluation and development of new techniques, especially learning-based ones. To overcome this data scarcity issue, in this paper we investigate the application of data augmentation for natural language text data. Data augmentation methods are well established in machine learning for creating new, synthetic data without human assistance. We find that many of these methods are applicable to the task of business process information extraction, improving the accuracy of extraction. Our study shows, that data augmentation is an important component in enabling machine learning methods for the task of business process model generation from natural language text, where currently mostly rule-based systems are still state of the art. Simple data augmentation techniques improved the $F_1$ score of mention extraction by 2.9 percentage points, and the $F_1$ of relation extraction by $4.5$. To better understand how data augmentation alters human annotated texts, we analyze the resulting text, visualizing and discussing the properties of augmented textual data. We make all code and experiments results publicly available.
title Leveraging Data Augmentation for Process Information Extraction
topic Computation and Language
url https://arxiv.org/abs/2404.07501