Affecting off-task behaviour: how affect-aware feedback can improve student learning

B. Grawemeyer, M. Mavrikis, Wayne Holmes, S. Santos, Michael Wiedmann, N. Rummel
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引用次数: 25

Abstract

This paper describes the development and evaluation of an affect-aware intelligent support component that is part of a learning environment known as iTalk2Learn. The intelligent support component is able to tailor feedback according to a student's affective state, which is deduced both from speech and interaction. The affect prediction is used to determine which type of feedback is provided and how that feedback is presented (interruptive or non-interruptive). The system includes two Bayesian networks that were trained with data gathered in a series of ecologically-valid Wizard-of-Oz studies, where the effect of the type of feedback and the presentation of feedback on students' affective states was investigated. This paper reports results from an experiment that compared a version that provided affect-aware feedback (affect condition) with one that provided feedback based on performance only (non-affect condition). Results show that students who were in the affect condition were less bored and less off-task, with the latter being statically significant. Importantly, students in both conditions made learning gains that were statistically significant, while students in the affect condition had higher learning gains than those in the non-affect condition, although this result was not statistically significant in this study's sample. Taken all together, the results point to the potential and positive impact of affect-aware intelligent support.
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影响非任务行为:情感感知反馈如何改善学生的学习
本文描述了一个情感感知智能支持组件的开发和评估,该组件是学习环境iTalk2Learn的一部分。智能支持组件能够根据学生的情感状态定制反馈,这是从语音和互动中推断出来的。影响预测用于确定提供哪种类型的反馈以及如何呈现反馈(中断的还是非中断的)。该系统包括两个贝叶斯网络,它们是用一系列生态有效的《绿野仙踪》研究中收集的数据进行训练的,其中调查了反馈类型和反馈呈现对学生情感状态的影响。本文报告了一项实验的结果,该实验将提供情感感知反馈(情感条件)的版本与仅提供基于表现的反馈(非情感条件)的版本进行了比较。结果表明,处于情绪状态的学生更少感到无聊,更少离开任务,后者具有显著的统计学意义。重要的是,两种情况下的学生都获得了统计学意义上的学习收益,而情感条件下的学生比非情感条件下的学生获得了更高的学习收益,尽管这一结果在本研究的样本中没有统计学意义。综上所述,研究结果指出了情感感知智能支持的潜在和积极影响。
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