从法规文本中提取有意义的实体:实现法规遵从的自动化

Krishna Sapkota, A. Aldea, M. Younas, D. Duce, R. Bañares-Alcántara
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引用次数: 16

摘要

从法规文本中提取基本含义有助于法规遵循管理(CM)过程的自动化。CM是一个过程,在这个过程中,组织保证过程是根据需求和期望运行的。然而,从监管指南中提取有意义的文本面临着许多研究挑战,如处理不同的文档格式、隐含的文档结构、文本的模糊性和复杂性。本文描述了Semantic-ART框架的扩展版本,其重点是解决文档结构识别和监管实体提取的挑战。与之前版本的框架相比,初步结果显示出令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting meaningful entities from regulatory text: Towards automating regulatory compliance
Extracting essential meaning from the regulatory text helps in the automation of the Compliance Management (CM) process. CM is a process where organizations assure that the processes are run according to requirements and expectations. However, extraction of meaningful text from regulatory guidelines comes with many research challenges such as dealing with different document-format, implicit document-structure, textual ambiguity and complexity. In this paper, the extended version of the Semantic-ART framework is described, which focuses on tackling the challenges of document-structure identification and regulatory-entity extraction. An initial result has shown an inspirational result as compared to the previous version of the framework.
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