个体差异的贝叶斯模型和灵活的归纳推理分类的例子

Louis Faucon, Jennifer K. Olsen, P. Dillenbourg
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引用次数: 2

摘要

归纳推理是一项重要的教育实践,但教师在课堂上很难支持归纳推理,因为选择挑战学生现有观点的教材需要高水平的准备和课堂时间。智能辅导系统可以通过支持基于归纳过程的学生模型的示例自动适应,潜在地促进教师的这项工作。然而,目前的归纳推理模型通常缺乏有助于适应学习环境的两个主要特征,即学生的个体差异和学生在接受反馈时的学习跟踪。在本文中,我们描述了一个模型来预测和模拟学生对分类任务的归纳推理。我们的方法使用贝叶斯模型来描述学生的推理过程。这个模型允许我们通过考虑学生的特征偏差来预测他们在分类问题中的选择。使用222名学生对三个主题进行分类的数据,我们发现我们的模型有75%的准确率,比基线模型高10%。我们的模型是对学习分析的贡献,它使我们能够为单个学生分配不同的偏见概况,并跟踪这些概况随时间的变化,通过这些变化,我们可以更好地了解学生的学习过程。该模型可以系统地分析学生归纳推理策略的差异和演变,同时支持自适应归纳学习环境的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A bayesian model of individual differences and flexibility in inductive reasoning for categorization of examples
Inductive reasoning is an important educational practice but can be difficult for teachers to support in the classroom due to the high level of preparation and classroom time needed to choose the teaching materials that challenge students' current views. Intelligent tutoring systems can potentially facilitate this work for teachers by supporting the automatic adaptation of examples based on a student model of the induction process. However, current models of inductive reasoning usually lack two main characteristics helpful to adaptive learning environments, individual differences of students and tracing of students' learning as they receive feedback. In this paper, we describe a model to predict and simulate inductive reasoning of students for a categorization task. Our approach uses a Bayesian model for describing the reasoning processes of students. This model allows us to predict students' choices in categorization questions by accounting for their feature biases. Using data gathered from 222 students categorizing three topics, we find that our model has a 75% accuracy, which is 10% greater than a baseline model. Our model is a contribution to learning analytics by enabling us to assign different bias profiles to individual students and tracking these profile changes over time through which we can gain a better understanding of students' learning processes. This model may be relevant for systematically analysing students' differences and evolution in inductive reasoning strategies while supporting the design of adaptive inductive learning environments.
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