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Early Prediction of Student Frustration

机译:学生挫折的早期预测

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摘要

Affective reasoning has been the subject of increasing attention in recent years. Because negative affective states such as frustration and anxiety can impede progress toward learning goals, intelligent tutoring systems should be able to detect when a student is anxious or frustrated. Being able to detect negative affective states early, i.e., before they lead students to abandon learning tasks, could permit intelligent tutoring systems sufficient time to adequately prepare for, plan, and enact affective tutorial support strategies. A first step toward this objective is to develop predictive models of student frustration. This paper describes an inductive approach to student frustration detection and reports on an experiment whose results suggest that frustration models can make predictions early and accurately.
机译:近年来,情感推理一直是人们关注的焦点。由于诸如挫败感和焦虑之类的负面情感状态会阻碍学习目标的进展,因此智能辅导系统应该能够检测学生何时感到焦虑或沮丧。能够及早发现负面的情感状态,即在他们导致学生放弃学习任务之前,可以使智能辅导系统有足够的时间来充分准备,计划和制定情感教程支持策略。朝着这个目标迈出的第一步是建立学生挫败感的预测模型。本文介绍了一种归纳方法来检测学生的挫败感,并报告了一项实验,该实验的结果表明,挫折模型可以较早且准确地做出预测。

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