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Individualised modelling of affective data for intelligent tutoring systems: lessons learned

机译:智能辅导系统的个性化建模:学习的经验教训

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摘要

One on one tutoring from human expert tutors to human students is the most effective form of instruction found to date. There are many actions that human tutors perform which make them remarkably effective, including the attention that they pay to the cognitive and affective states of the human students that they tutor, and the use of this knowledge to modify the way that they instruct the material. According to theoretical models, learner state data is used to inform instructional data and decisions, which then influences the learning of the student. Naturally, the data about student state must be available in order to be used to adjust the instruction. Success amongst operational systems, however, has not been observed with generalised modelling techniques. Individualised and adaptive modelling techniques from other domains in the literature present an alternative to the approach which is not observing significant operational success. This work investigates individualised adaptive models, validates the approach, and shows that it can produce models of acceptable quality, but that doing so does not obviate the experimenter from creating quality generalised models prior to individualising.
机译:一个关于人类专家委托人对人类学生的一贯辅导是迄今为止最有效的教学形式。有许多行动是人类辅导员的表现,使他们能够显着有效,包括他们对人类学生的认知和情感国家的注意力,他们导师,以及使用这些知识来修改他们指示材料的方式。根据理论模型,学习者状态数据用于通知教学数据和决策,然后影响学生的学习。当然,必须使用关于学生状态的数据,以便用于调整指令。然而,在普遍的建模技术中尚未观察到运营系统中的成功。文献中其他域的个性化和适应性建模技术具有替代方法,该方法并未观察到显着的操作成功。这项工作调查了个性化的自适应模型,验证了这种方法,并表明它可以产生可接受的质量模型,但这样做不会避免实验者在个性化之前创建优质的广义模型。

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