Applications of Machine Learning in Knowledge Management System: A Comprehensive Review

Casper Gihes Kaun Simon, N. Jhanjhi, Goh Wei Wei, Sanath Sukumaran
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Abstract

As new generations of technology appear, legacy knowledge management solutions and applications become increasingly out of date, necessitating a paradigm shift. Machine learning presents an opportunity by foregoing rule-based knowledge intensive systems inundating the marketplace. An extensive review was made on the literature pertaining to machine learning which common machine learning algorithms were identified. This study has analysed more than 200 papers extracted from Scopus and IEEE databases. Searches ranged with the bulk of the articles from 2018 to 2021, while some articles ranged from 1959 to 2017. The research gap focusses on implementing machine learning algorithm to knowledge management systems, specifically knowledge management attributes. By investigating and reviewing each algorithm extensively, the usability of each algorithm is identified, with its advantages and disadvantages. From there onwards, these algorithms were mapped for what area of knowledge management it may be beneficial. Based on the findings, it is evidently seen how these algorithms are applicable in knowledge management and how it can enhance knowledge management system further. Based on the findings, the paper aims to bridge the gap between the literature in knowledge management and machine learning. A knowledge management–machine learning framework is conceived based on the review done on each algorithm earlier and to bridge the gap between the two literatures. The framework highlights how machine learning algorithm can play a part in different areas of knowledge management. From the framework, it provides practitioners how and where to implement machine learning in knowledge management.
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机器学习在知识管理系统中的应用综述
随着新一代技术的出现,遗留的知识管理解决方案和应用程序变得越来越过时,需要进行范式转换。机器学习为之前充斥市场的基于规则的知识密集型系统提供了机会。对有关机器学习的文献进行了广泛的回顾,确定了常见的机器学习算法。这项研究分析了从Scopus和IEEE数据库中提取的200多篇论文。大部分文章的搜索范围从2018年到2021年,而一些文章的搜索范围从1959年到2017年。研究缺口主要集中在将机器学习算法应用于知识管理系统,特别是知识管理属性。通过对每种算法的广泛研究和回顾,确定了每种算法的可用性,并给出了其优缺点。从那时起,这些算法被映射到知识管理的哪个领域,它可能是有益的。研究结果显示了这些算法在知识管理中的应用,以及对知识管理系统的进一步完善。基于这些发现,本文旨在弥合知识管理和机器学习文献之间的差距。知识管理-机器学习框架是基于之前对每种算法的回顾而构思的,并弥合了两种文献之间的差距。该框架强调了机器学习算法如何在知识管理的不同领域发挥作用。从框架来看,它为实践者提供了如何以及在何处实现知识管理中的机器学习。
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