情感状态和状态测试:调查整个学年的影响如何预测学年结束时的学习成果

Z. Pardos, R. Baker, M. O. S. Pedro, S. M. Gowda, Supreeth M. Gowda
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引用次数: 151

摘要

在本文中,我们调查了学生在一个基于网络的辅导平台上的整个学年的影响与年终的学习成果之间的对应关系,在一个高风险的数学考试中。情感和学习结果之间的关系之前已经有过研究,但不是以纵向和细粒度的方式进行的。情感检测器用于基于对导师日志数据的事后分析来估计学生的情感状态。对于每个学生在导师中的行为,检测器给我们一个学生处于无聊、专注、困惑和沮丧状态的估计概率,以及他们表现出任务外或游戏行为的估计概率。我们对使用ASSISTments数学辅导系统的八年级学生两年的日志数据运行检测器,并收集了我们队列中1393名学生相应的年末、高风险、州数学考试成绩。通过关联这些数据源,我们发现解决问题时的无聊感与表现呈负相关,正如预期的那样;然而,当在脚手架式辅导中表现出来时,无聊与表现呈正相关。类似的模式出人意料地出现在混乱中。专注和沮丧都与积极的学习结果有关,令人惊讶的是,在沮丧的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Affective states and state tests: investigating how affect throughout the school year predicts end of year learning outcomes
In this paper, we investigate the correspondence between student affect in a web-based tutoring platform throughout the school year and learning outcomes at the end of the year, on a high-stakes mathematics exam. The relationships between affect and learning outcomes have been previously studied, but not in a manner that is both longitudinal and finer-grained. Affect detectors are used to estimate student affective states based on post-hoc analysis of tutor log-data. For every student action in the tutor the detectors give us an estimated probability that the student is in a state of boredom, engaged concentration, confusion, and frustration, and estimates of the probability that they are exhibiting off-task or gaming behaviors. We ran the detectors on two years of log-data from 8th grade student use of the ASSISTments math tutoring system and collected corresponding end of year, high stakes, state math test scores for the 1,393 students in our cohort. By correlating these data sources, we find that boredom during problem solving is negatively correlated with performance, as expected; however, boredom is positively correlated with performance when exhibited during scaffolded tutoring. A similar pattern is unexpectedly seen for confusion. Engaged concentration and frustration are both associated with positive learning outcomes, surprisingly in the case of frustration.
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