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Exploration of Knowledge Engineering Paradigms for Smart Education: Techniques, Tools, Benefits and Challenges

机译:智能教育知识工程范式的探索:技术,工具,福利和挑战

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Knowledge engineering paradigms (KEPs) deal with the development of intelligent systems in which reasoning and knowledge play pivotal role. Recently, KEPs receive increasing attention within the fields of smart education. Researchers have been used the knowledge engineering (KE) techniques, approaches and methodologies to develop a smart tutoring systems (STSs). The main characteristics of such systems are the ability of reasoning, inference and based on static and heuristic knowledge. On the other side, the convergence of artificial intelligence (AI), web science (WS) and data science (DS) is enabling the creation of a new generation of web-based smart systems for all educational and learning tasks. This paper discusses the KEPs techniques and tools for developing the smart educational and learning systems. Four most popular paradigms are discussed and analyzed namely; case-based reasoning, ontological engineering, data mining and intelligent agents. The main objective of this study is to determine and exploration the benefits and advantages of such computational paradigms to increase the effectiveness and enhancing the efficiency of the smart tutoring systems. Moreover, the paper addresses the challenges faced by the application developers and knowledge engineers in developing and deploying such systems. In addition to institutional and organizational aspects of smart educational technologies development and application.
机译:知识工程范式(KEPS)处理智能系统的发展,其中推理和知识发挥关键作用。最近,KEPS在智能教育领域中获得了不断的关注。研究人员已经使用了知识工程(KE)技术,方法和方法来开发智能辅导系统(STSS)。这种系统的主要特征是推理,推论和基于静态和启发式知识的能力。另一方面,人工智能(AI),网络科学(WS)和数据科学(DS)的融合是为所有教育和学习任务创建新一代基于Web的智能系统。本文讨论了开发智能教育和学习系统的KEPS技术和工具。讨论并分析了四个最受欢迎的范式。基于案例的推理,本体工程,数据挖掘和智能代理。本研究的主要目的是确定和探索这种计算范式的益处和优势,以提高效果,提高智能辅导系统的效率。此外,该文件涉及应用程序开发人员和知识工程师在开发和部署此类系统方面所面临的挑战。除了智能教育技术开发和应用的机构和组织方面。

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