Towards a Brain-Sensitive Intelligent Tutoring System: Detecting Emotions from Brainwaves

Alicia Heraz, C. Frasson
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引用次数: 17

Abstract

This paper proposes and evaluates a multiagents system called NORA that predicts emotional attributes from learners' brainwaves within an intelligent tutoring system. The measurements from the electrical brain activity of the learner are combined with information about the learner's emotional attributes. Electroencephalogram was used to measure brainwaves and self-reports to measure the three emotional dimensions: pleasure, arousal, and dominance, the eight emotions occurring during learning: anger, boredom, confusion, contempt curious, disgust, eureka, and frustration, and the emotional valence positive for learning and negative for learning. The systemis evaluated on natural data, and it achieves an accuracy of over 63%, significantly outperforming classification using the individual modalities and several other combination schemes.
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迈向对大脑敏感的智能辅导系统:从脑电波中探测情绪
本文提出并评估了一个多智能体系统NORA,该系统可以从智能辅导系统中学习者的脑电波中预测情绪属性。来自学习者脑电活动的测量结果与学习者情感属性的信息相结合。采用脑电图测量脑电波和自我报告测量快乐、兴奋和支配三个情绪维度,学习过程中出现的八种情绪:愤怒、无聊、困惑、蔑视、好奇、厌恶、顿悟和沮丧,以及学习的积极效价和学习的消极效价。该系统对自然数据进行了评估,其准确率超过63%,明显优于使用单个模式和其他几种组合方案的分类。
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