Text Mining Business Policy Documents: Applied Data Science in Finance

M. Spruit, D. Ferati
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引用次数: 6

Abstract

In a time when the employment of natural language processing techniques in domains such as biomedicine, national security, finance, and law is flourishing, this study takes a deep look at its application in policy documents. Besides providing an overview of the current state of the literature that treats these concepts, the authors implement a set of natural language processing techniques on internal bank policies. The implementation of these techniques, together with the results that derive from the experiments and expert evaluation, introduce a meta-algorithmic modelling framework for processing internal business policies. This framework relies on three natural language processing techniques, namely information extraction, automatic summarization, and automatic keyword extraction. For the reference extraction and keyword extraction tasks, the authors calculated precision, recall, and F-scores. For the former, the researchers obtained 0.99, 0.84, and 0.89; for the latter, this research obtained 0.79, 0.87, and 0.83, respectively. Finally, the summary extraction approach was positively evaluated using a qualitative assessment.
文本挖掘业务策略文档:在金融中的应用数据科学
在自然语言处理技术在生物医学、国家安全、金融和法律等领域的应用蓬勃发展的背景下,本研究深入探讨了自然语言处理技术在政策文件中的应用。除了概述处理这些概念的文献的现状外,作者还在内部银行政策上实现了一套自然语言处理技术。这些技术的实现,以及来自实验和专家评估的结果,引入了用于处理内部业务策略的元算法建模框架。该框架依赖于三种自然语言处理技术,即信息提取、自动摘要和自动关键字提取。对于参考文献提取和关键字提取任务,作者计算了精度、召回率和f分数。对于前者,研究人员得到0.99、0.84和0.89;对于后者,本研究分别得到0.79、0.87和0.83。最后,通过定性评价对摘要提取方法进行了积极评价。
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