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Modeling Personalized Learning Styles in a Web-Based Learning System

机译:在基于Web的学习系统中建模个性化学习风格

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An innovative learning mechanism for identifying learners' learning styles to improve adaptive learning is proposed. Hypermedia-learning tools are highly interactive to learners in web-based environments that have become increasingly popular in the field of education. However, these learning tools are frequently inadequate for individualize learning because accessing adaptive learning content is required for learners to achieve objectives. For predicating adaptive learning, a neuron-fuzzy inference approach is used to model the diagnosis of learning styles. Then, according to the diagnosis results, a recommendation model is constructed to help learners obtain adaptive digital content. The proposed approach has the capability of tracking learning activities on-line to correspond with learning styles. The results show that the identified model successfully classified 102 learners into groups based on learning style. The implemented learning mechanism produced a clear learning guide for learning activities, which can help an advanced learning system retrieve a well-structure learning unit.
机译:提出了一种创新的学习机制,用于识别学习者的学习风格,以改善适应性学习。超媒体学习工具与基于Web的环境中的学习者具有高度的交互性,而基于Web的环境在教育领域越来越流行。但是,这些学习工具通常不足以进行个性化学习,因为学习者需要访问自适应学习内容才能实现目标。为了预测自适应学习,使用神经元模糊推理方法对学习风格的诊断进行建模。然后,根据诊断结果,构建推荐模型,以帮助学习者获得自适应数字内容。所提出的方法具有在线跟踪学习活动以与学习风格相对应的能力。结果表明,所识别的模型基于学习风格成功地将102个学习者分为几类。实施的学习机制为学习活动提供了清晰的学习指南,可以帮助高级学习系统检索结构良好的学习单元。

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