Systematic Review and Framework for AI-Driven Tacit Knowledge Conversion Methods and Machine Learning Algorithms for Ontology-Based Chatbots in E-Learning Platforms

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DOI:

https://doi.org/10.3991/ijim.v19i01.51051

Keywords:

Tacit Knowledge, Explicit Knowledge, ontology, Chatbot

Abstract


The conversion of tacit knowledge, which is deeply rooted in personal experience and often difficult to articulate, presents a significant challenge within knowledge management systems. Ontology-based chatbots offer a promising solution by leveraging structured knowledge representations and advanced natural language processing (NLP) techniques to facilitate this transformation. This paper explores the various methods and algorithms used in developing ontology-based chatbots, with a particular focus on their role in converting tacit knowledge into more accessible forms. Additionally, it provides a comparative analysis of the algorithms employed, highlighting their respective strengths and weaknesses. Ultimately, this study addresses the critical challenge of managing and converting tacit knowledge, with the aim of enhancing the overall effectiveness of knowledge management systems.

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Published

2025-01-13

How to Cite

Zaoui Seghroucheni, O., Lazaar, M., & Al Achhab, M. (2025). Systematic Review and Framework for AI-Driven Tacit Knowledge Conversion Methods and Machine Learning Algorithms for Ontology-Based Chatbots in E-Learning Platforms. International Journal of Interactive Mobile Technologies (iJIM), 19(01), pp. 126–139. https://doi.org/10.3991/ijim.v19i01.51051

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Papers