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Adaptive Support versus Alternating Worked Examples and Tutored Problems: Which Leads to Better Learning?

机译:自适应支持与交替的工作示例和辅导问题:这导致更好的学习?

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Learning from worked examples has been shown to be superior to unsupported problem solving when first learning in a new domain. Several studies have found that learning from examples results in faster learning in comparison to tutored problem solving in Intelligent Tutoring Systems. We present a study that compares a fixed sequence of alternating worked examples and tutored problem solving with a strategy that adaptively decides how much assistance the student needs. The adaptive strategy determines the type of task (a worked example, a faded example or a problem to be solved) based on how much assistance the student received in the previous problem. The results show that students in the adaptive condition learnt significantly more than their peers who were presented with a fixed sequence of worked examples and problems.
机译:从工作示例中学习的学习已被证明在新域名首次学习时解决了不受支持的问题。有几项研究发现,与智能辅导系统的辅导解决问题相比,从示例的学习导致更快的学习。我们展示了一项研究,该研究比较了一个固定的交替工作示例和辅导问题解决的策略,以便自适应地决定学生需求的援助。根据先前问题收到的学生收到的帮助,自适应策略决定了任务类型(工作示例,褪色的示例或要解决的问题)。结果表明,自适应条件中的学生比以固定的工作示例和问题呈现的同行得多。

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