4.7 Article

A software architecture perspective about Moodle flexibility for supporting empirical research of teaching theories

期刊

EDUCATION AND INFORMATION TECHNOLOGIES
卷 26, 期 1, 页码 817-842

出版社

SPRINGER
DOI: 10.1007/s10639-020-10291-4

关键词

Learning styles; Bayesian networks; Moodle; Virtual learning environments

资金

  1. CICPBA (Comision de Investigaciones Cientificas de la Provincia de Buenos Aires)

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Moodle is a widely used platform for Virtual Learning Management Systems in educational institutions, providing a standard solution for teaching and learning. Researchers can conduct experimental research on learning styles through Moodle, but limitations in its design make it challenging to support dynamic computational behaviors such as teachbot implementations.
Moodle represents a great contribution to the educational world since it provides an evolving platform for Virtual Learning Management Systems (VLMS) that became a standard de facto for most of the educational institutions around the world. Through the pedagogical functions provided, it collects in the many globally spread out databases a huge amount of information regarding the activities that teachers and students perform during the learning process. This reality makes Moodle a natural choice for conducting experimental research by Artificial Intelligence researchers interested in theories for improving learning and teaching; particularly those related with the controversiallearning stylesconcept. Roughly defined, a learning style intends to be a model of the way and media an apprentice acquires knowledge and hence the way a teacher should present that knowledge to the apprentice matching his/her learning style. Independently of the many controversies (be these scientific, psychological or even ethical) about the soundness and real outcomes that such ideas can bring to improve learning, it's a worthy intriguing research area for many researchers pursuing the ideal automated teacher:the teachbot dream. Behind this goal we have developed Middle, a Moodle plug-in able to infer the learning style of each student taking a course using an advanced version of a Bayesian network model that we previously tested. Middle intends supportpersonalizedteaching based on the Felder-Silverman's ILS model and has been evaluated through controlled experiments and pilot test in high schools and university courses. Such experiments showed promising results that shed some light on learning styles modeling and its potential outcomes. During the experience we found strong limitations in the Moodle design regarding its supposed flexibility to incorporate new functionalities. From a strict software architecture point of view, we found that such flexibility is far from being enough to easier the implementation of the dynamic computational behavior required to support ateachbot. This made our effort much harder than expected, perhaps because of the illusion induced by the widespread use of Moodle. In this article we present our results and experiences extending Moddle with intelligent behavior from a software architecture point of view, focusing on the lessons learnt in such extension. Our experience indicates that this simplicity is far from being so and hence it is worth to share the limitations and how we overcome them.

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