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Modeling Learner Affect with Theoretically Grounded Dynamic Bayesian Networks

机译:用理论接地动态贝叶斯网络建模学习者影响

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Evidence of the strong relationship between learning and emotion has fueled recent work in modeling affective states in intelligent tutoring systems. Many of these models are based on general models of affect without a specific focus on learner emotions. This paper presents work that investigates the benefits of using theoretical models of learner emotions to guide the development of Bayesian networks for prediction of student affect. Predictive models are empirically learned from data acquired from 260 students interacting with the game-based learning environment, CRYSTAL ISLAND. Results indicate the benefits of using theoretical models of learner emotions to inform predictive models. The most successful model, a dynamic Bayesian network, also highlights the importance of temporal information in predicting learner emotions. This work demonstrates the benefits of basing predictive models of learner emotions on theoretical foundations and has implications for how these models may be used to validate theoretical models of emotion.
机译:学习与情感之间有强有力的证据促使最近在智能辅导系统中建模情感状态的工作。这些模型中的许多型号都是基于一般影响模型,而没有特定的专注于学习者情绪。本文提出了研究使用学习者情绪理论模型的好处,以指导贝叶斯网络的发展以预测学生影响。从260名学生与基于比赛的学习环境,水晶岛的学生互动的数据获得预测模型。结果表明使用学习者情绪的理论模型来通知预测模型的好处。最成功的模型是一种动态贝叶斯网络,也强调了时间信息在预测学习者情绪方面的重要性。这项工作展示了基于理论基础上基于学习者情绪的预测模型的好处,并对这些模型如何用于验证情感的理论模型有影响。

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