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Design A Personalized E-learning System Based On Item Response Theory And Artificial Neural Network Approach

机译:基于项目响应理论和人工神经网络方法的个性化电子学习系统设计

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摘要

In web-based educational systems the structure of learning domain and content are usually presented in the static way, without taking into account the learners' goals, their experiences, their existing knowledge, their ability (known as insufficient flexibility), and without interactivity (means there is less opportunity for receiving instant responses or feedbacks from the instructor when learners need support). Therefore, considering personalization and interactivity will increase the quality of learning. In the other side, among numerous components of e-learning, assessment is an important part. Generally, the process of instruction completes with the assessment and it is used to evaluate learners' learning efficiency, skill and knowledge. But in web-based educational systems there is less attention on adaptive and personalized assessment. Having considered the importance of tests, this paper proposes a personalized multi-agent e-learning system based on item response theory (IRT) and artificial neural network (ANN) which presents adaptive tests (based on IRT) and personalized recommendations (based on ANN). These agents add adaptivity and interactivity to the learning environment and act as a human instructor which guides the learners in a friendly and personalized teaching environment.
机译:在基于网络的教育系统中,学习领域和内容的结构通常以静态方式呈现,而不考虑学习者的目标,他们的经历,他们现有的知识,他们的能力(称为灵活性不足),并且没有互动性(意味着当学习者需要支持时,很少有机会从教师那里接收即时响应或反馈)。因此,考虑个性化和互动性将提高学习质量。另一方面,在电子学习的众多组成部分中,评估是重要的部分。通常,教学过程通过评估来完成,用于评估学习者的学习效率,技能和知识。但是在基于网络的教育系统中,对自适应和个性化评估的关注较少。考虑到测试的重要性,本文提出了一种基于项目响应理论(IRT)和人工神经网络(ANN)的个性化多主体电子学习系统,该系统提出了自适应测试(基于IRT)和个性化推荐(基于ANN) )。这些代理增加了学习环境的适应性和交互性,并充当人类指导者,在友好和个性化的教学环境中指导学习者。

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