A new approach to impact case study analytics

Jiajie Zhang, P. Watson, Barry Hodgson
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Abstract

The 2014 Research Excellence Framework (REF) assessed the quality of university research in the UK. 20% of the assessment was allocated according to peer review of the impact of research, reflecting the growing importance of impact in UK government policy. Beyond academia, impact is defined as a change or benefit to the economy, society, culture, public policy or services, health, the environment, or quality of life. Each institution submitted a set of four-page impact case studies. These are predominantly free-form descriptions and evidences of the impact of study. Numerous analyses of these case studies have been conducted, but they have utilised either qualitative methods or primary forms of text searching. These approaches have limitations, including the time required to manually analyse the data and the frequently inferior quality of the answers provided by applying computational analysis to unstructured, context-less free text data. This paper describes a new system to address these problems. At its core is a structured, queryable representation of the case study data. We describe the ontology design used to structure the information and how semantic web related technologies are used to store and query the data. Experiments show that this gives two significant advantages over existing techniques: improved accuracy in question answering and the capability to answer a broader range of questions, by integrating data from external sources. Then we investigate whether machine learning can predict each case study’s grade using this structured representation. The results provide accurate predictions for computer science impact case studies.
影响案例研究分析的新方法
2014年卓越研究框架(REF)评估了英国大学的研究质量。20%的评估是根据研究影响的同行评审来分配的,这反映了影响在英国政府政策中日益重要。在学术界之外,影响被定义为对经济、社会、文化、公共政策或服务、健康、环境或生活质量的改变或好处。每个机构提交了一套四页的影响案例研究。这些主要是自由形式的描述和研究影响的证据。对这些案例研究进行了大量的分析,但它们要么使用定性方法,要么使用初级形式的文本搜索。这些方法都有局限性,包括手动分析数据所需的时间,以及通过将计算分析应用于非结构化、无上下文的自由文本数据所提供的答案的质量经常较差。本文描述了一个解决这些问题的新系统。其核心是案例研究数据的结构化、可查询的表示。我们描述了用于构建信息的本体设计,以及如何使用语义web相关技术来存储和查询数据。实验表明,与现有技术相比,这有两个显著的优势:提高了问题回答的准确性,以及通过整合外部来源的数据来回答更广泛问题的能力。然后,我们研究机器学习是否可以使用这种结构化表示来预测每个案例研究的成绩。研究结果为计算机科学影响案例研究提供了准确的预测。
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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