THE APPLICATION OF MACHINE LEARNING IN LITERATURE REVIEWS: A FRAMEWORK

IF 0.2 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yusuf Bozkurt, Reiner Braun, Alexander Rossmann
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Abstract

Literature reviews are essential for any scientific work, both as part of a dissertation or as a stand-alone work. Scientists benefit from the fact that more and more literature is available in electronic form, and finding and accessing relevant literature has become more accessible through scientific databases. However, a traditional literature review method is characterized by a highly manual process, while technologies and methods in big data, machine learning, and text mining have advanced. Especially in areas where research streams are rapidly evolving, and topics are becoming more comprehensive, complex, and heterogeneous, it is challenging to provide a holistic overview and identify research gaps manually. Therefore, we have developed a framework that supports the traditional approach of conducting a literature review using machine learning and text mining methods. The framework is particularly suitable in cases where a large amount of literature is available, and a holistic understanding of the research area is needed. The framework consists of several steps in which the critical mind of the scientist is supported by machine learning. The unstructured text data is transformed into a structured form through data preparation realized with text mining, making it applicable for various machine learning techniques. A concrete example in the field of smart cities makes the framework tangible.
机器学习在文献综述中的应用:一个框架
文献评论对于任何科学工作都是必不可少的,无论是作为论文的一部分还是作为独立的工作。科学家受益于越来越多的文献以电子形式提供,并且通过科学数据库查找和访问相关文献变得更加容易。然而,传统的文献综述方法具有高度手工化的特点,而大数据、机器学习和文本挖掘等技术和方法已经取得了进步。特别是在研究流快速发展的领域,以及主题变得更加全面、复杂和异构的领域,提供一个全面的概述和手动识别研究差距是具有挑战性的。因此,我们开发了一个框架,支持使用机器学习和文本挖掘方法进行文献综述的传统方法。该框架特别适用于大量文献可用的情况,并且需要对研究领域进行整体理解。该框架由几个步骤组成,在这些步骤中,科学家的批判性思维得到机器学习的支持。通过文本挖掘实现数据准备,将非结构化文本数据转化为结构化形式,适用于各种机器学习技术。智慧城市领域的一个具体例子使这个框架具体化。
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来源期刊
IADIS-International Journal on Computer Science and Information Systems
IADIS-International Journal on Computer Science and Information Systems COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
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