将学生建模为贝叶斯学习者的个性化机会

Charles Lang
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引用次数: 2

摘要

下面的论文是一个新的贝叶斯框架的概念验证演示,用于推断个体学生和他们学习的环境。它对自动化个性化教学和对教育环境进行概率建模都有意义。通过将学生建模为贝叶斯学习者,即权衡他们先前的信念与当前环境数据以得出结论的个体,可以以概率的方式对表现和教育环境的影响进行估计。该框架通过贝叶斯算法进行测试,该算法可用于表征学生在课程材料中的先验知识并预测学生的表现。这是用两个模拟数据来演示的。该算法生成的估计值在模拟数据上的定性表现与预期一致,并且预测学生的表现比随机预测要好得多。接下来将讨论该框架的结果和概念上的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opportunities for personalization in modeling students as Bayesian learners
The following paper is a proof-of-concept demonstration of a novel Bayesian framework for making inferences about individual students and the context in which they are learning. It has implications for both efforts to automate personalized instruction and to probabilistically model educational context. By modelling students as Bayesian learners, individuals who weigh their prior belief against current circumstantial data to reach conclusions, it becomes possible to both generate estimates of performance and the impact of the educational environment in probabilistic terms. This framework is tested through a Bayesian algorithm that can be used to characterize student prior knowledge in course material and predict student performance. This is demonstrated using both simulated data. The algorithm generates estimates that behave qualitatively as expected on simulated data and predict student performance substantially better than chance. A discussion of the results and the conceptual benefits of the framework follow.
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