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Preparing learners to self-explain video examples: Text or video introduction?

机译:准备学习者自我解释视频示例:文本或视频介绍?

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The use of video examples in (online) learning scenarios is rapidly growing and can be very effective for learners with little or no prior knowledge. Previous research identified so-called self-explanation prompts as the method of choice to make learners deeply process the examples' principles. From a cognitive load perspective, it seems feasible to prepare learners for such self-explaining via written explanations and an introductory example-leaving the optimal presentation mode of this introductory example in question. We thus aimed to analyze effectiveness and efficiency of the presentation mode (i.e., written vs. video-based) of the introductory example. In our experiment, students (N = 42) received a written explanation supplemented with an introductory example, before they self-explained video-based examples. We found similar learning processes (i.e., cognitive load and self-explanation quality) and a large effect on learning outcomes (i.e., conceptual knowledge about the examples' principles)-irrespective of the introductory example's presentation mode. However, the written introductory example revealed efficiency advantages over the video-based one: studying it required less time, and recalling its principles required less mental effort. Finally, we identified previous experience with video-based learning as a predictor for learning outcomes.
机译:在(在线)学习场景中使用视频示例正在快速增长,并且对于学习者来说,对于少数或未证明的知识可能非常有效。以前的研究确定了所谓的自我解释提示作为选择学习者深入处理示例原则的方法。从认知负载的角度来看,准备学习者似乎是通过书面解释的自解释和介绍示例 - 离开所介绍示例的最佳呈现模式的自我解释。因此,我们旨在分析介绍示例的呈现模式的有效性和效率(即,编写的VS.基于视频)。在我们的实验中,学生(n = 42)在自解释了基于视频的例子之前,收到了补充有介绍示例的书面解释。我们发现了类似的学习过程(即,认知负载和自我解释质量)以及对学习结果的巨大影响(即关于示例原理的概念知识) - 介绍示例的呈现模式的误框。但是,书面介绍性示例揭示了基于视频的效率优势:研究其需要更少的时间,并回顾其原则所需的精神努力。最后,我们确定了以前的视频学习经验,作为学习结果的预测因素。

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