Using Bayesian Networks to Manage Uncertainty in Student Modeling

被引:0
|
作者
Cristina Conati
Abigail Gertner
Kurt VanLehn
机构
[1] University of British Columbia,Department of Computer Science
[2] The MITRE Corporation,Department of Computer Science and Learning and Research Development Center
[3] University of Pittsburgh,undefined
关键词
student modelling; Intelligent Tutoring Systems; dynamic Bayesian networks;
D O I
暂无
中图分类号
学科分类号
摘要
When a tutoring system aims to provide students with interactive help, it needs to know what knowledge the student has and what goals the student is currently trying to achieve. That is, it must do both assessment and plan recognition. These modeling tasks involve a high level of uncertainty when students are allowed to follow various lines of reasoning and are not required to show all their reasoning explicitly. We use Bayesian networks as a comprehensive, sound formalism to handle this uncertainty. Using Bayesian networks, we have devised the probabilistic student models for Andes, a tutoring system for Newtonian physics whose philosophy is to maximize student initiative and freedom during the pedagogical interaction. Andes’ models provide long-term knowledge assessment, plan recognition, and prediction of students’ actions during problem solving, as well as assessment of students’ knowledge and understanding as students read and explain worked out examples. In this paper, we describe the basic mechanisms that allow Andes’ student models to soundly perform assessment and plan recognition, as well as the Bayesian network solutions to issues that arose in scaling up the model to a full-scale, field evaluated application. We also summarize the results of several evaluations of Andes which provide evidence on the accuracy of its student models.
引用
收藏
页码:371 / 417
页数:46
相关论文
共 50 条
  • [41] Quantifying Uncertainty in Projections of Desertification in Central Asia Using Bayesian Networks
    Liu, Jinping
    Ren, Yanqun
    He, Panxing
    Xiao, Jianhua
    REMOTE SENSING, 2025, 17 (04)
  • [42] Describing Uncertainty in Salmonella Thermal Inactivation Using Bayesian Statistical Modeling
    Koyama, Kento
    Aspridou, Zafiro
    Koseki, Shige
    Koutsoumanis, Konstantinos
    FRONTIERS IN MICROBIOLOGY, 2019, 10
  • [43] A practical approach to Bayesian student modeling
    Murray, WR
    INTELLIGENT TUTORING SYSTEMS, 1998, 1452 : 424 - 433
  • [44] The effect of model granularity on student performance prediction using Bayesian networks
    Pardos, Zachary A.
    Heffernan, Neil T.
    Anderson, Brigham
    Heffernan, Cristina L.
    USER MODELING 2007, PROCEEDINGS, 2007, 4511 : 435 - +
  • [45] Bayesian belief networks as a versatile method for assessing uncertainty in land-change modeling
    Krueger, Carsten
    Lakes, Tobia
    INTERNATIONAL JOURNAL OF GEOGRAPHICAL INFORMATION SCIENCE, 2015, 29 (01) : 111 - 131
  • [46] Coping with Uncertainty in Schema Matching: Bayesian Networks and Agent-Based Modeling Approach
    Assoudi, Hicham
    Lounis, Hakim
    E-TECHNOLOGIES, MCETECH 2015, 2015, 209 : 53 - 67
  • [47] Bayesian deep convolutional encoder-decoder networks for surrogate modeling and uncertainty quantification
    Zhu, Yinhao
    Zabaras, Nicholas
    JOURNAL OF COMPUTATIONAL PHYSICS, 2018, 366 : 415 - 447
  • [48] End-To-End Label Uncertainty Modeling for Speech-based Arousal Recognition Using Bayesian Neural Networks
    Prabhu, Navin Raj
    Carbajal, Guillaume
    Lehmann-Willenbrock, Nale
    Gerkmann, Timo
    INTERSPEECH 2022, 2022, : 151 - 155
  • [49] Improved reliability modeling using Bayesian networks and dynamic discretization
    Marquez, David
    Neil, Martin
    Fenton, Norman
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2010, 95 (04) : 412 - 425
  • [50] Aggregated Residential Load Modeling Using Dynamic Bayesian Networks
    Vlachopoulou, Maria
    Chin, George
    Fuller, Jason
    Lu, Shuai
    2014 IEEE INTERNATIONAL CONFERENCE ON SMART GRID COMMUNICATIONS (SMARTGRIDCOMM), 2014, : 818 - 823