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Computational Models of Human Learning: Applications for Tutor Development, Behavior Prediction, and Theory Testing

机译:人类学习的计算模型:在教师发展,行为预测和理论测试中的应用

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摘要

Intelligent tutoring systems are effective for improving students' learning outcomes (Bowen et al., 2013; Koedinger & Anderson, 1997; Pane et al., 2013). However, constructing tutoring systems that are pedagogically effective has been widely recognized as a challenging problem (Murray, 1999, 2003). In this thesis, I explore the use of computational models of apprentice learning, or computer models that learn interactively from examples and feedback, to support tutor development. In particular, I investigate their use for authoring expert-models via demonstrations and feedback (Matsuda et al., 2014), predicting student behavior within tutors (VanLehn et al., 1994), and for testing alternative learning theories (MacLellan, Harpstead, Patel, & Koedinger, 2016).;To support these investigations, I present the Apprentice Learner Architecture, which posits the types of knowledge, performance, and learning components needed for apprentice learning and enables the generation and testing of alternative models. I use this architecture to create two models: the DECISION TREE model, which non-incrementally learns when to apply its skills, and the TRESTLE model, which instead learns incrementally. Both models both draw on the same small set of prior knowledge for all simulations (six operators and three types of relational knowledge). Despite their limited prior knowledge, I demonstrate their use for efficiently authoring a novel experimental design tutor and show that they are capable of achieving human-level performance in seven additional tutoring systems that teach a wide range of knowledge types (associations, categories, and skills) across multiple domains (language, math, engineering, and science).;I show that the models are capable of predicting which versions of a fraction arithmetic and box and arrows tutors are more effective for human students' learning. Further, I use a mixedeffects regression analysis to evaluate the fit of the models to the available human data and show that across all seven domains the TRESTLE model better fits the human data than the DECISION TREE model, supporting the theory that humans learn the conditions under which skills apply incrementally, rather than non-incrementally as prior work has suggested (Li, 2013; Matsuda et al., 2009). This work lays the foundation for the development of a Model Human Learner---similar to Card, Moran, and Newell's (1986) Model Human Processor---that encapsulates psychological and learning science findings in a format that researchers and instructional designers can use to create effective tutoring systems.
机译:智能补习系统可有效改善学生的学习成果(Bowen等,2013; Koedinger&Anderson,1997; Pane等,2013)。然而,构建教学有效的补习系统已被广泛认为是一个具有挑战性的问题(Murray,1999,2003)。在本文中,我探索了学徒学习的计算模型或从示例和反馈中交互学习的计算机模型的使用,以支持教师的发展。特别是,我研究了它们在演示和反馈中用于编写专家模型的方法(Matsuda等人,2014),预测教师内部学生的行为(VanLehn等人,1994)以及测试替代学习理论(MacLellan,Harpstead, Patel&&Koedinger,2016年);为了支持这些调查,我提出了学徒学习者体系结构,该体系结构假定了学徒学习所需的知识,性能和学习组件的类型,并能够生成和测试替代模型。我使用这种体系结构来创建两个模型:DECISION TREE模型(不增量学习何时应用其技能)和TRESTLE模型(增量学习)。两种模型都在所有模拟中使用相同的一小组先验知识(六个运算符和三种类型的关系知识)。尽管他们的先验知识有限,但我展示了它们在有效创作新颖的实验设计导师方面的应用,并展示了它们能够在另外七种导师系统中实现人类水平的性能,这些导师系统教授各种知识类型(关联,类别和技能) )跨多个领域(语言,数学,工程学和科学)。我展示了这些模型能够预测分数算术和盒装和箭型辅导老师的哪个版本对人类学生的学习更为有效。此外,我使用混合效应回归分析来评估模型与可用人类数据的拟合度,并显示在所有七个域中,TRESTLE模型比DECISION TREE模型更适合人类数据,支持了人类学习条件下的理论。哪些技能是逐步应用的,而不是像以前的工作所建议的那样逐步应用(李,2013;松田等,2009)。这项工作为开发类似于Card,Moran和Newell(1986)的Model Human Processor的模型学习者奠定了基础,该模型以研究人员和教学设计师可以使用的格式封装了心理学和学习科学方面的发现。创建有效的辅导系统。

著录项

  • 作者

    MacLellan, Christopher J.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Artificial intelligence.;Computer science.;Cognitive psychology.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 109 p.
  • 总页数 109
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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