数字笔特征预测任务难度和用户认知测试的表现

Michael Barz, Kristin Altmeyer, Sarah Malone, Luisa Lauer, Daniel Sonntag
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引用次数: 10

摘要

数字笔信号被证明可以预测教育环境中的认知状态、认知负荷和情绪。我们研究了在没有语义内容分析的情况下,基于低级笔的特征是否可以预测认知测试任务的难度和学习者在这些任务中的表现,这与认知负荷有着内在的联系。我们在一项对小学儿童的对照研究中记录了不同难度任务的数据。我们包括两种版本的轨迹测试(TMT)和来自Snijders-Oomen非语言智力测试(SON)的六种绘图模式作为任务,这些任务的难度越来越高。我们研究了使用不同特征选择策略的支持向量机和梯度增强决策树来预测任务难度和用户表现作为认知负荷的衡量标准的准确性。结果表明,我们基于相关性的特征选择有利于模型训练,特别是当TMT和SON的样本连接起来进行难度和时间的联合建模时。我们的发现为技术增强的适应性学习提供了机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital Pen Features Predict Task Difficulty and User Performance of Cognitive Tests
Digital pen signals were shown to be predictive for cognitive states, cognitive load and emotion in educational settings. We investigate whether low-level pen-based features can predict the difficulty of tasks in a cognitive test and the learner's performance in these tasks, which is inherently related to cognitive load, without a semantic content analysis. We record data for tasks of varying difficulty in a controlled study with children from elementary school. We include two versions of the Trail Making Test (TMT) and six drawing patterns from the Snijders-Oomen Non-verbal intelligence test (SON) as tasks that feature increasing levels of difficulty. We examine how accurately we can predict the task difficulty and the user performance as a measure for cognitive load using support vector machines and gradient boosted decision trees with different feature selection strategies. The results show that our correlation-based feature selection is beneficial for model training, in particular when samples from TMT and SON are concatenated for joint modelling of difficulty and time. Our findings open up opportunities for technology-enhanced adaptive learning.
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