Cost-Efficient Quality Assurance of Natural Language Processing Tools through Continuous Monitoring with Continuous Integration

Marc Schreiber, B. Kraft, Albert Zündorf
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引用次数: 5

Abstract

More and more modern applications make use of natural language data, e. g. Information Extraction (IE) or Question Answering (QA) systems. Those application require preprocessing through Natural Language Processing (NLP) pipelines, and the output quality of these applications depends on the output quality of NLP pipelines. If NLP pipelines are applied in different domains, the output quality decreases and the application requires domain specific NLP training to improve the output quality.Adapting NLP tools to specific domains is a time-consuming and expensive task, inducing two key questions: a) how many documents need to be annotated to reach good output quality and b) what NLP tools build the best performing NLP pipeline? In this paper we demonstrate a monitoring system based on principles of Continuous Integration which addresses those questions and guides IE or QA application developers to build high quality NLP pipelines in a cost-efficient way. This monitoring system is based on many common tools, used in many software engineering projects.
通过持续监测和持续集成实现自然语言处理工具的成本效益质量保证
越来越多的现代应用程序使用自然语言数据,例如信息提取(IE)或问答(QA)系统。这些应用程序需要通过自然语言处理(NLP)管道进行预处理,而这些应用程序的输出质量取决于自然语言处理管道的输出质量。如果NLP管道应用于不同的领域,则输出质量会下降,并且应用程序需要特定于领域的NLP训练来提高输出质量。将NLP工具应用于特定领域是一项耗时且昂贵的任务,这引出了两个关键问题:a)需要对多少文档进行注释才能达到良好的输出质量;b)哪些NLP工具构建了性能最好的NLP管道?在本文中,我们展示了一个基于持续集成原则的监控系统,它解决了这些问题,并指导IE或QA应用程序开发人员以一种经济有效的方式构建高质量的NLP管道。该监控系统基于许多常用工具,在许多软件工程项目中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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