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Users-Centric Adaptive Learning System Based on Interval Type-2 Fuzzy Logic for Massively Crowded E-Learning Platforms

机译:基于区间2型模糊逻辑的以用户为中心的大规模拥挤的在线学习平台

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Technological advancements within the educational sector and online learning promoted portable data-based adaptive techniques to influence the developments within transformative learning and enhancing the learning experience. However, many common adaptive educational systems tend to focus on adopting learning content that revolves around pre-black box learner modelling and teaching models that depend on the ideas of a few experts. Such views might be characterized by various sources of uncertainty about the learner response evaluation with adaptive educational system, linked to learner reception of instruction. High linguistic uncertainty levels in e-learning settings result in different user interpretations and responses to the same techniques, words, or terms according to their plans, cognition, pre-knowledge, and motivation levels. Hence, adaptive teaching models must be targeted to individual learners’ needs. Thus, developing a teaching model based on the knowledge of how learners interact with the learning environment in readable and interpretable white box models is critical in the guidance of the adaptation approach for learners’ needs as well as understanding the way learning is achieved.This paper presents a novel interval type-2 fuzzy logic-based system which is capable of identifying learners’ preferred learning strategies and knowledge delivery needs that revolves around characteristics of learners and the existing knowledge level in generating an adaptive learning environment. We have conducted a large scale evaluation of the proposed system via real-word experiments on 1458 students within a massively crowded e-learning platform. Such evaluations have shown the proposed interval type-2 fuzzy logic system’s capability of handling the encountered uncertainties which enabled to achieve superior performance with regard to better completion and success rates as well as enhanced learning compared to the non-adaptive systems, adaptive system versions led by the teacher, and type-1-based fuzzy based counterparts.
机译:教育领域和在线学习中的技术进步促进了基于便携式数据的自适应技术的发展,从而影响了变革性学习的发展并增强了学习体验。但是,许多常见的适应性教育系统倾向于集中于采用围绕黑匣子前学习者建模和教学模型(取决于少数专家的思想)的学习内容。这种观点的特征可能在于与适应性教育系统有关的学习者反应评估的各种不确定性来源,这些不确定性与学习者的接受教学有关。电子学习环境中较高的语言不确定性会导致用户根据其计划,认知,预知识和动机水平对相同的技术,单词或术语的解释和响应不同。因此,自适应教学模型必须针对个别学习者的需求。因此,基于对学习者如何在可读和可解释的白盒模型中与学习环境进行交互的知识来开发教学模型,对于指导适应学习者需求的方法以及理解学习方式至关重要。提出了一种新颖的基于区间2型模糊逻辑的系统,该系统能够识别学习者的首选学习策略和知识交付需求,这些需求围绕学习者的特征和现有的知识水平而生成自适应学习环境。我们通过在大量拥挤的电子学习平台上的1458名学生的真实单词实验对提议的系统进行了大规模评估。这样的评估表明,建议的区间2型模糊逻辑系统具有处理遇到的不确定性的能力,与非自适应系统相比,该系统能够在更好的完成率和成功率以及增强的学习方面实现卓越的性能,由老师和基于类型1的模糊对口。

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