论文标题
扩展提示工厂的援助困境:一种新颖的,数据驱动的帮助预测指标,以实现主动解决问题的帮助
Extending the Hint Factory for the assistance dilemma: A novel, data-driven HelpNeed Predictor for proactive problem-solving help
论文作者
论文摘要
确定何时以及是否提供个性化支持是一个众所周知的挑战,称为援助困境。解决援助困境的核心问题是需要发现何时学生没有生产力,以便导师可以介入。对于开放式领域,即使那些具有定义的原则和目标的结构良好的领域,这种任务尤其具有挑战性。在本文中,我们提出了一组数据驱动的方法,以在结构良好的逻辑开放式开放式域中对无效的问题解决步骤进行分类,预测和防止。这种方法利用并扩展了提示工厂,这是一组利用先前学生解决方案试图构建数据驱动智能导师的方法。我们提出了一个帮助的分类,该分类使用先前的学生数据来确定学生何时可能没有生产力,并且需要帮助学习最佳解决问题的策略。我们提出了一项对照研究,以确定自适应教学政策的影响,该策略根据我们的帮助预测指标的结果提供了主动提示:生产力与非生产力。我们的结果表明,处于自适应状况的学生表现出更好的训练行为,避免帮助较低和帮助适当性(在可能需要的情况下可能会获得帮助的机会更高的机会),与对照相比,使用帮助人员分类器进行了测量。此外,结果表明,根据培训期间的帮助预测,获得自适应提示的学生在后测试中明显胜过他们的控制同伴,前者在更短的时间内产生了更短,更优化的解决方案。我们最终提出了有关如何将这些帮助方法应用于其他结构良好的开放式域名的建议。
Determining when and whether to provide personalized support is a well-known challenge called the assistance dilemma. A core problem in solving the assistance dilemma is the need to discover when students are unproductive so that the tutor can intervene. Such a task is particularly challenging for open-ended domains, even those that are well-structured with defined principles and goals. In this paper, we present a set of data-driven methods to classify, predict, and prevent unproductive problem-solving steps in the well-structured open-ended domain of logic. This approach leverages and extends the Hint Factory, a set of methods that leverages prior student solution attempts to build data-driven intelligent tutors. We present a HelpNeed classification, that uses prior student data to determine when students are likely to be unproductive and need help learning optimal problem-solving strategies. We present a controlled study to determine the impact of an Adaptive pedagogical policy that provides proactive hints at the start of each step based on the outcomes of our HelpNeed predictor: productive vs. unproductive. Our results show that the students in the Adaptive condition exhibited better training behaviors, with lower help avoidance, and higher help appropriateness (a higher chance of receiving help when it was likely to be needed), as measured using the HelpNeed classifier, when compared to the Control. Furthermore, the results show that the students who received Adaptive hints based on HelpNeed predictions during training significantly outperform their Control peers on the posttest, with the former producing shorter, more optimal solutions in less time. We conclude with suggestions on how these HelpNeed methods could be applied in other well-structured open-ended domains.