论文标题

建立MOOC中自适应学习的一般培训框架

Towards a General Pre-training Framework for Adaptive Learning in MOOCs

论文作者

Zhong, Qingyang, Yu, Jifan, Zhang, Zheyuan, Mao, Yiming, Wang, Yuquan, Lin, Yankai, Hou, Lei, Li, Juanzi, Tang, Jie

论文摘要

自适应学习旨在刺激和满足个人学习者的需求,这需要对各种任务进行复杂的系统级协调,包括对学习资源进行建模,估计学生国家并提出个性化建议。与统计模型相比,现有的深度学习方法取得了巨大的成功。但是,由于它们由高度耦合的特定于任务特定的架构组成,并且依靠小规模,粗粒的建议方案,因此它们仍然缺乏对各种任务的概括,并且容量不足。为了实现教学理论中提出的一般自适应系统的想法,NLP中新兴的预培训技术,我们试图进行实践探索,以将预训练应用于自适应学习,以提出基于数据观察和学习方式分析的统一框架,并适当利用异性学习元素。通过一系列学习推荐,学习资源评估,知识追踪和辍学预测的下游任务,我们发现课程结构,文本和知识有助于建模和固有地与学生非序列学习行为一致,并且在预训练基础中包含的间接相关信息可以在跨下游任务中共享,以跨下游任务共享有效性。我们最终建立了自适应学习的简化系统应用,并反思带回教学法的见解。源代码和数据集将发布。

Adaptive learning aims to stimulate and meet the needs of individual learners, which requires sophisticated system-level coordination of diverse tasks, including modeling learning resources, estimating student states, and making personalized recommendations. Existing deep learning methods have achieved great success over statistical models; however, they still lack generalization for diverse tasks and suffer from insufficient capacity since they are composed of highly-coupled task-specific architectures and rely on small-scale, coarse-grained recommendation scenarios. To realize the idea of general adaptive systems proposed in pedagogical theory, with the emerging pre-training techniques in NLP, we try to conduct a practical exploration on applying pre-training to adaptive learning, to propose a unified framework based on data observation and learning style analysis, properly leveraging heterogeneous learning elements. Through a series of downstream tasks of Learning Recommendation, Learning Resource Evaluation, Knowledge Tracing, and Dropout Prediction, we find that course structures, text, and knowledge are helpful for modeling and inherently coherent to student non-sequential learning behaviors and that indirectly relevant information included in the pre-training foundation can be shared across downstream tasks to facilitate effectiveness. We finally build a simplified systematic application of adaptive learning and reflect on the insights brought back to pedagogy. The source code and dataset will be released.

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