大规模评估适应性事实学习中的冷启动缓解措施:知道 "什么 "比知道 "谁 "更重要

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS
Maarten van der Velde, Florian Sense, Jelmer P. Borst, Hedderik van Rijn
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引用次数: 0

摘要

自适应学习系统提供了一个个性化的数字环境,能够不断根据学习者和教材进行调整,从而最大限度地提高学习效率。每当这样的系统遇到新的学习者,或者老学习者开始学习新材料时,系统首先必须确定材料对特定学习者的难度。如果不能解决这个 "冷启动 "问题,就会导致学习效果不佳,并有可能脱离系统,因为系统可能会提出难度不合适的问题或提供无益的反馈。在一项对自适应事实学习系统的大型教育数据集(来自近 14 万名学习者的约 1 亿次试验)进行的模拟研究中,我们从响应数据中预测了个人学习参数。使用这些预测参数作为自适应学习系统的起始估计值,可以获得比使用默认值更准确的学习者记忆效果模型。我们发现,基于事实难度("什么")的预测通常优于基于学习者能力("谁")的预测,尽管两者都有助于获得更好的模型估计值。这项工作扩展了之前的一项较小规模的实验室实验,在该实验中,在冷启动情景中使用针对特定事实的预测提高了学习效果。目前的研究结果表明,在现实世界的教育环境中,类似的冷启动缓解也是可能的。可以利用改进后的预测来提高学习系统的效率,减轻冷启动的负面影响,并有可能改善学习效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Large-scale evaluation of cold-start mitigation in adaptive fact learning: Knowing “what” matters more than knowing “who”

Large-scale evaluation of cold-start mitigation in adaptive fact learning: Knowing “what” matters more than knowing “who”

Adaptive learning systems offer a personalised digital environment that continually adjusts to the learner and the material, with the goal of maximising learning gains. Whenever such a system encounters a new learner, or when a returning learner starts studying new material, the system first has to determine the difficulty of the material for that specific learner. Failing to address this “cold-start” problem leads to suboptimal learning and potential disengagement from the system, as the system may present problems of an inappropriate difficulty or provide unhelpful feedback. In a simulation study conducted on a large educational data set from an adaptive fact learning system (about 100 million trials from almost 140 thousand learners), we predicted individual learning parameters from response data. Using these predicted parameters as starting estimates for the adaptive learning system yielded a more accurate model of learners’ memory performance than using default values. We found that predictions based on the difficulty of the fact (“what”) generally outperformed predictions based on the ability of the learner (“who”), though both contributed to better model estimates. This work extends a previous smaller-scale laboratory-based experiment in which using fact-specific predictions in a cold-start scenario improved learning outcomes. The current findings suggest that similar cold-start alleviation may be possible in real-world educational settings. The improved predictions can be harnessed to increase the efficiency of the learning system, mitigate the negative effects of a cold start, and potentially improve learning outcomes.

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来源期刊
User Modeling and User-Adapted Interaction
User Modeling and User-Adapted Interaction 工程技术-计算机:控制论
CiteScore
8.90
自引率
8.30%
发文量
35
审稿时长
>12 weeks
期刊介绍: User Modeling and User-Adapted Interaction provides an interdisciplinary forum for the dissemination of novel and significant original research results about interactive computer systems that can adapt themselves to their users, and on the design, use, and evaluation of user models for adaptation. The journal publishes high-quality original papers from, e.g., the following areas: acquisition and formal representation of user models; conceptual models and user stereotypes for personalization; student modeling and adaptive learning; models of groups of users; user model driven personalised information discovery and retrieval; recommender systems; adaptive user interfaces and agents; adaptation for accessibility and inclusion; generic user modeling systems and tools; interoperability of user models; personalization in areas such as; affective computing; ubiquitous and mobile computing; language based interactions; multi-modal interactions; virtual and augmented reality; social media and the Web; human-robot interaction; behaviour change interventions; personalized applications in specific domains; privacy, accountability, and security of information for personalization; responsible adaptation: fairness, accountability, explainability, transparency and control; methods for the design and evaluation of user models and adaptive systems
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