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Comparing Student Models in Different Formalisms by Predicting Their Impact on Help Success

机译:通过预测学生对帮助成功的影响,比较不同形式的学生模型

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We describe a method to evaluate how student models affect ITS decision quality - their raison d'etre. Given logs of randomized tutorial decisions and ensuing student performance, we train a classifier to predict tutor decision outcomes (success or failure) based on situation features, such as student and task. We define a decision policy that selects whichever tutor action the trained classifier predicts in the current situation is likeliest to lead to a successful outcome. The ideal but costly way to evaluate such a policy is to implement it in the tutor and collect new data, which may require months of tutor use by hundreds of students. Instead, we use historical data to simulate a policy by extrapolating its effects from the subset of randomized decisions that happened to follow the policy. We then compare policies based on alternative student models by their simulated impact on the success rate of tutorial decisions. We test the method on data logged by Project LISTEN'S Reading Tutor, which chooses randomly which type of help to give on a word. We report the cross-validated accuracy of predictions based on four types of student models, and compare the resulting policies' expected success and coverage. The method provides a utility-relevant metric to compare student models expressed in different formalisms.
机译:我们描述了一种评估学生模型如何影响ITS决策质量的方法-他们的存在理由。给定随机指导决定的日志和随后的学生表现,我们训练分类器以根据情况特征(例如学生和任务)预测导师决定的结果(成功或失败)。我们定义了一个决策策略,该策略选择受过训练的分类者预测在当前情况下最有可能导致成功结果的任何导师行为。评估此类策略的理想但昂贵的方法是在导师中实施该策略并收集新数据,这可能需要数百名学生使用几个月的导师。相反,我们使用历史数据通过从恰好遵循该策略的随机决策子集中推断其效果来模拟策略。然后,我们根据替代学生模型对指导决策​​成功率的模拟影响来比较政策。我们在LISTEN的“阅读导师”记录的数据上测试该方法,该方法随机选择要对单词提供哪种类型的帮助。我们报告了基于四种学生模型的交叉验证的预测准确性,并比较了由此产生的政策的预期成功率和覆盖率。该方法提供了一个与效用相关的度量,以比较以不同形式表示的学生模型。

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