On the Dependence Structure Between Learners' Response-time and Knowledge Mastery: If Not Linear, Then What?

Z. Papamitsiou, K. Sharma, M. Giannakos
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引用次数: 1

Abstract

Popular approaches in learner modeling explore response-time as observational data supplemental to response correctness, to enrich the predictive models of learner knowledge. It has been argued that the relationship between response-time and knowledge mastery is non-linear. Determining the degree of association (dependence structure) between those two observations is an open question. To address this objective, we propose an approach based on copulas, i.e., a statistical tool suitable for capturing dependence structure between two variables. All of the information about the dependence structures can be estimated by copula models separately, allowing for the construction of more flexible joint distributions than existing multivariate distributions. This paper puts into practice a two-step pipeline for building the analytical models. Specifically, we propose a flexible copula-based approach that describes the dependence structure between students' response-time and mastery, in learning and testing contexts, and apply the methodology on four datasets. The two datasets are coming from Intelligent Tutoring Systems and are shared via an online repository, and the other two were collected during the validation of an (adaptive) assessment system. The results reveal five generic patterns of associations across-datasets, for various types of activities, domains and learner characteristics (i.e., not across-contexts). We elaborate on those findings and on the implications of our approach for adaptive systems.
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学习者反应时间与知识掌握的依赖结构:如果不是线性的,那又是什么?
学习者建模中常用的方法是将响应时间作为响应正确性的补充观察数据,以丰富学习者知识的预测模型。人们一直认为,反应时间和知识掌握之间的关系是非线性的。确定这两个观察结果之间的关联程度(依赖结构)是一个悬而未决的问题。为了实现这一目标,我们提出了一种基于copulas的方法,即一种适合捕获两个变量之间依赖结构的统计工具。所有关于依赖结构的信息都可以由联结模型单独估计,从而允许构建比现有的多变量分布更灵活的联合分布。本文采用了一种两步法构建分析模型。具体来说,我们提出了一种灵活的基于公式的方法,该方法描述了学生在学习和测试环境下的反应时间和掌握程度之间的依赖结构,并将该方法应用于四个数据集。这两个数据集来自智能辅导系统,并通过在线存储库共享,另外两个数据集是在(自适应)评估系统验证期间收集的。结果揭示了跨数据集的五种通用关联模式,适用于各种类型的活动、领域和学习者特征(即,不是跨上下文)。我们详细阐述了这些发现以及我们的方法对自适应系统的影响。
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