A Cognitive Knowledge-based Framework for Social and Metacognitive Support in Mobile Learning

Author:

A. Al-Hunaiyyan Ahmed1,T Bimba Andrew2,Idris Norisma2,Al-Sharhan Salah2

Affiliation:

1. Computer & Information Systems Department, College of Business Studies, Public Authority for Applied Education and Training (PAAET)

2. University of Malaya

Abstract

Aim/Purpose: This work aims to present a knowledge modeling technique that supports the representation of the student learning process and that is capable of providing a means for self-assessment and evaluating newly acquired knowledge. The objective is to propose a means to address the pedagogical challenges in m-learning by aiding students’ metacognition through a model of a student with the target domain and pedagogy. Background: This research proposes a framework for social and meta-cognitive support to tackle the challenges raised. Two algorithms are introduced: the meta-cognition algorithm for representing the student’s learning process, which is capable of providing a means for self-assessment, and the social group mapping algorithm for classifying students according to social groups. Methodology : Based on the characteristics of knowledge in an m-learning system, the cognitive knowledge base is proposed for knowledge elicitation and representation. The proposed technique allows a proper categorization of students to support collaborative learning in a social platform by utilizing the strength of m-learning in a social context. The social group mapping and metacognition algorithms are presented. Contribution: The proposed model is envisaged to serve as a guide for developers in implementing suitable m-learning applications. Furthermore, educationists and instructors can devise new pedagogical practices based on the possibilities provided by the proposed m-learning framework. Findings: The effectiveness of any knowledge management system is grounded in the technique used in representing the knowledge. The CKB proposed manipulates knowledge as a dynamic concept network, similar to human knowledge processing, thus, providing a rich semantic capability, which provides various relationships between concepts. Recommendations for Practitioners: Educationist and instructors need to develop new pedagogical practices in line with m-learning. Recommendation for Researchers: The design and implementation of an effective m-learning application are challenging due to the reliance on both pedagogical and technological elements. To tackle this challenge, frameworks which describe the conceptual interaction between the various components of pedagogy and technology need to be proposed. Impact on Society: The creation of an educational platform that provides instant access to relevant knowledge. Future Research: In the future, the proposed framework will be evaluated against some set of criteria for its effectiveness in acquiring and presenting knowledge in a real-life scenario. By analyzing real student interaction in m-learning, the algorithms will be tested to show their applicability in eliciting student metacognition and support for social interactivity.

Publisher

Informing Science Institute

Subject

Information Systems and Management,General Computer Science

Cited by 7 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Mobile learning frameworks and pedagogy: A systematic review;European Journal of Education;2023-12-03

2. Investigating Factors Influencing Students’ Behavioral Intentions Towards Mobile Learning Devices in Higher Educational Institutions;European Journal of Interactive Multimedia and Education;2022-10-10

3. Success Factors & Challenges for Mobile Collaborative Learning Implementation in Higher Education;2021 International Conference on Advanced Computer Science and Information Systems (ICACSIS);2021-10-23

4. Developing a Framework for Mobile Learning Adoption and Sustainable Development;Technology, Knowledge and Learning;2021-08-16

5. A Cognitive Knowledge Base for Learning Disabilities Using Concept Analysis;Advances in Intelligent Systems and Computing;2020-05-26

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